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Multi-dimensional civic engagement of older Europeans: a latent class analysis

Published online by Cambridge University Press:  22 November 2024

Toon Vercauteren*
Affiliation:
Department of Educational Sciences, Society and Ageing Research Lab (SARLab), Vrije Universiteit Brussel, Brussels, Belgium
Sofie Van Regenmortel
Affiliation:
Department of Educational Sciences, Society and Ageing Research Lab (SARLab), Vrije Universiteit Brussel, Brussels, Belgium
Marina Näsman
Affiliation:
Faculty of Education and Welfare Studies, Social Policy, Åbo Akademi University, Vaasa, Finland
Fredrica Nyqvist
Affiliation:
Faculty of Education and Welfare Studies, Social Policy, Åbo Akademi University, Vaasa, Finland
Dorien Brosens
Affiliation:
Department of Educational Sciences, Society and Ageing Research Lab (SARLab), Vrije Universiteit Brussel, Brussels, Belgium Research Foundation Flanders, Brussels, Belgium
Rodrigo Serrat
Affiliation:
Department of Cognition Development and Educational Psychology, University of Barcelona, Barcelona, Spain
Sarah Dury
Affiliation:
Department of Educational Sciences, Society and Ageing Research Lab (SARLab), Vrije Universiteit Brussel, Brussels, Belgium
*
Corresponding author: Toon Vercauteren; Email: [email protected]
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Abstract

Civic engagement is increasingly relevant for healthy and active ageing and addressing social exclusion among older people. Current research focuses primarily on formal volunteering, overlooking other ways older people contribute to their families and communities. This study addresses these gaps by recognising civic engagement as multi-dimensional – including associational engagement, informal care-giving, formal volunteering, digital engagement and formal/informal political engagement – and exploring activity combinations among older individuals. Using data from the 2016 European Quality of Life Survey (33 European countries), it examines the civic engagement of 9,031 individuals aged 65+. Descriptive analysis maps their multi-dimensional civic engagement, while latent class analysis identifies distinct engagement profiles and explores which activities are combined. It also investigates the socio-structural and social capital resources associated with each profile. Findings reveal that 32 per cent of older individuals are not engaged in civic activities. Among the civically engaged, five profiles emerge, illustrating varied engagement across multiple activities. Many older people (35.8 per cent) combine several civic activities, albeit in different combinations. Informal care-giving can be found in all profiles; and for a large part of the population, it is their only civic activity, while another profile displays older Europeans engaged in several activities simultaneously. Higher levels of socio-structural resources are associated with greater diversity in civic engagement in later life. Interventions and policies therefore must consider the diverse circumstances and preferences of older people and valorise and include all forms of multi-dimensional civic engagement, including informal care-giving, in policy making.

Type
Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2024. Published by Cambridge University Press.

Introduction

Civic engagement is an important pillar of social inclusion, encompassing a variety of activities including informal care-giving, associational engagement, political engagement, formal volunteering and digital engagement (e.g. Putnam Reference Putnam2000; Seifert and Rössel Reference Seifert, Rössel, Gu and Dupre2021; Serrat et al. Reference Serrat, Scharf and Villar2021a). And yet, research on the civic engagement of older people is limited (Serrat et al. Reference Serrat, Scharf and Villar2021a) as it does not take into account its multi-dimensional features (e.g. Serrat et al. Reference Serrat, Scharf, Villar, Walsh, Scharf, Van Regenmortel and Wanka2021b). To date, formal volunteering among older people has been relatively well-researched (e.g. Dury et al. Reference Dury, Brosens, Smetcoren, Van Regenmortel, De Witte, De Donder and Verté2020; Serrat et al. Reference Serrat, Scharf and Villar2021a), whereas other dimensions, like informal care-giving, political engagement, associational engagement and digital engagement, have scarcely been addressed (Cutler et al. Reference Cutler, Hendricks, O’Neill, Binstock and George2011; Serrat et al. Reference Serrat, Scharf and Villar2021a). Furthermore, gerontological research has not considered whether and how people engage in multiple civic activities (Dury et al. Reference Dury, De Donder, De Witte, Buffel, Jacquet and Verté2015; Seifert and Rössel Reference Seifert, Rössel, Gu and Dupre2021; Serrat et al. Reference Serrat, Scharf and Villar2021a; Smith Reference Smith2013). This article aims to fill this gap in knowledge by examining the multi-dimensional civic engagement of older people and the combinations of activities they engage in, to provide a more comprehensive picture of older Europeans’ civic engagement. In the literature review, it first discusses the multi-dimensionality of the concept of civic engagement and various theories, and then analyses the predictors associated with the multi-dimensional civic engagement of older people. Last, role extension and overload in relation to the civic engagement of older people are explored.

Multi-dimensional civic engagement of older people

Research on the multi-dimensional civic engagement of older people is crucial as it can promote healthy and fulfilling ageing processes while simultaneously benefiting and strengthening communities (Beard et al. Reference Beard, Officer, De Carvalho, Sadana, Pot, Michel, Lloyd-Sherlock, Epping-Jordan, Peeters, Mahanani, Thiyagarajan and Chatterji2016; Morrow-Howell et al. Reference Morrow-Howell, Wang, Amano and Knight2019). This form of engagement is also relevant to the concept of a participatory democracy and to the pursuit of active and/or healthy ageing (Beard et al. Reference Beard, Officer, De Carvalho, Sadana, Pot, Michel, Lloyd-Sherlock, Epping-Jordan, Peeters, Mahanani, Thiyagarajan and Chatterji2016; World Health Organization 2023). Civic engagement has the potential to address social exclusion by empowering older people to exercise agency, actively participate in community life and contribute to collective decision-making processes, thereby ensuring that their voices are heard (Serrat et al. Reference Serrat, Warburton, Andrea and Feliciano2018). Although civic engagement has come more to the forefront of gerontological research in recent years, studies remain inconsistent when defining the term civic engagement and the activities it encompasses for older people (Adler and Goggin Reference Adler and Goggin2005; Martinson and Minkler Reference Martinson and Minkler2006; Serrat et al. Reference Serrat, Scharf and Villar2021a). The classic interpretation of the concept of civic engagement, coined by Adler and Goggin (Reference Adler and Goggin2005, p. 239), is ‘how an active citizen participates in the life of a community to improve conditions for others or help shape the community’s future’. More recently, Serrat et al. (Reference Serrat, Scharf and Villar2021a, p. 246) defined civic engagement in later life as ‘informal and formal activities aimed at seeking better benefits for others, the community or wider society, or influencing collective decision-making processes’. In the literature, civic engagement is generally defined as volunteering and political engagement (e.g. Serrat et al. Reference Serrat, Scharf, Villar, Walsh, Scharf, Van Regenmortel and Wanka2021b; Van Dijk et al. Reference Van Dijk, Cramm, Van Exel and Nieboer2015). As different definitions are used to describe these indicators of civic engagement, this article uses the taxonomy proposed by Serrat et al. (Reference Serrat, Scharf, Villar, Walsh, Scharf, Van Regenmortel and Wanka2021b), including political engagement and volunteering, while adding associational engagement and digital engagement. Political engagement is taking part in activities that impact decision-making processes. It can be formal or institutionalised (e.g. voting) or informal or non-institutionalised (e.g. protesting), with formal political participation taking place inside, and informal political participation outside, classical electoral democratic systems and organisations like political parties.

Volunteering can be both formal and informal (informal care-giving). Formal volunteering takes place collectively through organisations, whereas informal care-giving involves individual activities aimed at helping people inside and outside the family sphere (Serrat et al. Reference Serrat, Scharf and Villar2021a). Complementing these indicators, this article also includes associational engagement following the concept of civic engagement used by Putnam (Reference Putnam2000), who describes civic engagement activities that build social capital, including engaging in organisational activities. Digital engagement is likewise included as an indicator of civic engagement, as civic engagement can take place in the digital space (Seifert and Rössel Reference Seifert, Rössel, Gu and Dupre2021).

Although these descriptions imply a broad understanding of the concept, some studies consider only political engagement as part of civic engagement (e.g. Burr et al. Reference Burr, Caro and Moorhead2002; van Deth Reference van Deth and Thompson2016), while others consider only formal volunteering (e.g. Doolittle and Faul Reference Doolittle and Faul2013; O’Neill et al. Reference O’Neill, Morrow-Howell, Wilson, Settersten and Angel2011). Other research has examined a range of activities that are traditionally included in the definition of civic engagement, including informal care-giving, participation in associations and formal volunteering, without explicitly labelling these activities as civic engagement (Dury et al. Reference Dury, Stas, Switsers, Duppen, Domènech-Abella, Dierckx and De Donder2021). Some civic activities, such as formal volunteering, have been studied more extensively, while others, such as political engagement, informal care-giving and associational engagement, have received much less attention (e.g. Dury, De Donder, De Witte, Buffel et al. Reference Dury, De Donder, De Witte, Buffel, Jacquet and Verté2015; Seifert and Rössel Reference Seifert, Rössel, Gu and Dupre2021; Strauss Reference Strauss2021). Digital engagement – in this instance being civically engaged in the digital spaces – has so far mostly been ignored as part of civic engagement because it is a relatively new form that includes active involvement in society using modern technology such as the internet (Seifert and Rössel Reference Seifert, Rössel, Gu and Dupre2021).

Role extension and role overload

Despite the popularity of studies on civic engagement and especially the great diversity of interpretation of the term, substantial questions remain about the diversity of activities that older people engage in simultaneously. In the current literature, two theoretical insights might be relevant when addressing this issue: the role extension (Strauss Reference Strauss2021) and the role overload (Choi et al. Reference Choi, Burr, Mutchler and Caro2007; Coverman Reference Coverman1989; Goode Reference Goode1960) hypotheses. These two hypotheses can be traced back to role accumulation (Sieber Reference Sieber1974), role enhancement (Moen et al. Reference Moen, Robison and Dempster-McClain1995) and role strain theory (Goode Reference Goode1960), all founded on role theory (Merton Reference Merton1957). Role theory refers to the behaviour that people exhibit based on their societal roles. Especially older people tend to lose more societal roles than they gain, such as parenthood, a spouse or a professional occupation (Greenfield and Marks Reference Greenfield and Marks2004). However, this loss of societal roles can be replaced by pursuits like volunteering and informal care-giving (Hämäläinen et al. Reference Hämäläinen, Tanskanen and Danielsbacka2023). As for the role enhancement and role strain hypotheses, additional roles can put a strain on people or, conversely, enhance people’s levels of wellbeing by increasing power, prestige, resources and emotional gratification (Goode Reference Goode1960; Moen et al. Reference Moen, Robison and Dempster-McClain1995; Rozario et al. Reference Rozario, Morrow-Howell and Hinterlong2004; Sieber Reference Sieber1974).

Based on these role-related theories, the role extension hypothesis argues that older people who are engaged in one type of activity are also more likely to be engaged in other activities (Strauss Reference Strauss2021). This echoes the finding of Musick and Wilson (Reference Musick and Wilson2008) that being engaged in volunteer work prompts participation in other civic activities. Similarly, Dury, De Donder, De Witte, Brosens et al. (Reference Dury, De Donder, De Witte, Brosens, Smetcoren, Van Regenmortel and Verté2015) and Dury et al. (Reference Dury, Brosens, Smetcoren, Van Regenmortel, De Witte, De Donder and Verté2020) found that associational affiliations positively correlate with volunteering as such activities provide social ties that generate volunteering opportunities. The role extension hypothesis is also illustrated by Serrat et al. (Reference Serrat, Villar and Celdrán2015), who found that political engagement, too, has a positive correlation with volunteering.

Contrary to the role extension hypothesis, the role overload hypothesis states that limited resources or time keep people from engaging in civic activity (Choi et al. Reference Choi, Burr, Mutchler and Caro2007; Strauss Reference Strauss2021). To participate in a civic activity, like informal care-giving, people need to invest time and energy that cannot be used in other civic activities (Ackermann Reference Ackermann2019; Dury, De Donder, De Witte, Brosens et al. Reference Dury, De Donder, De Witte, Brosens, Smetcoren, Van Regenmortel and Verté2015). Resources that people have are limited – so if they allocate them to one activity, they will lack the resources to commit to other civic activities. Hence, both hypotheses – role extension and role overload – are potentially useful in explaining multi-dimensional civic engagement in later life.

In addition to the role enhancement and role overload hypotheses, it is crucial to acknowledge the fundamental distinction between informal care-giving and other forms of civic engagement. Older adults frequently assume informal care-giving roles owing to familial obligations or external requests (Choi et al. Reference Choi, Burr, Mutchler and Caro2007). Conversely, they may actively seek civic roles, such as voluntary, political or associational engagement, to replace previous roles and maintain social connections (e.g. Le and Aartsen Reference Le and Aartsen2022), including offering informal care-giving outside the household (Zhang and Bennett Reference Zhang and Bennett2024).

Predictors of civic engagement

Predictors that affect people’s civic engagement are well-documented (e.g. Ackermann Reference Ackermann2019; Dury, De Donder, De Witte, Buffel et al. Reference Dury, De Donder, De Witte, Buffel, Jacquet and Verté2015; Leedahl et al. Reference Leedahl, Sellon and Gallopyn2017; Serrat et al. Reference Serrat, Villar and Celdrán2015). Two theories frequently used to explain why some older people engage in civic activities and others do not are socio-structural resources theory and social capital theory (Dury, De Donder, De Witte, Buffel et al. Reference Dury, De Donder, De Witte, Buffel, Jacquet and Verté2015; Dury et al. Reference Dury, Brosens, Smetcoren, Van Regenmortel, De Witte, De Donder and Verté2020; Einolf and Chambré Reference Einolf and Chambré2011; Leedahl et al. Reference Leedahl, Sellon and Gallopyn2017; Serrat et al. Reference Serrat, Nyqvist, Torres, Dury and Näsman2023).

Socio-structural resources theory focuses on individual resources such as educational level, income and health that facilitate civic engagement, as they might provide assets that make it possible for people to participate in civic activities like volunteering (Wilson Reference Wilson2012). In terms of physical health, research on civic engagement indicates that good health is associated with a higher likelihood of being civically engaged (Stopka et al. Reference Stopka, Feng, Corlin, King, Mistry, Mansfield, Wang, Levine and Allen2022). This is in line with the findings that age-related health problems can pose a barrier for older people to engage in civic activities (Serrat et al. Reference Serrat, Petriwskyj, Villar and Warburton2017). Considering mental health, results point towards a negative association with volunteering (Dury, De Donder, De Witte, Buffel et al. Reference Dury, De Donder, De Witte, Buffel, Jacquet and Verté2015). Studies indicate a mostly positive association between education and civic engagement. In particular, higher educational attainment correlates strongly with volunteering and political engagement, as evidenced by studies such as Ackermann (Reference Ackermann2019) and Dury, De Donder, De Witte, Buffel et al. (Reference Dury, De Donder, De Witte, Buffel, Jacquet and Verté2015). However, contradictory results have been reported for informal care-giving, with higher education showing both positive and negative correlations (Hämäläinen et al. Reference Hämäläinen, Tanskanen and Danielsbacka2023; Ramaekers et al. Reference Ramaekers, Verbakel and Kraaykamp2022). Research on income tends to indicate that income is positively associated with participation in civic activities (Serrat et al. Reference Serrat, Nyqvist, Torres, Dury and Näsman2023).

For social capital theory, the focus lies on social connections and roles that facilitate civic engagement (Coleman Reference Coleman1988; Principi et al. Reference Principi, Warburton, Schippers and Rosa2012; Putnam Reference Putnam2000). In the civic engagement literature, these variables commonly include employment status and partner status (e.g. Boerio et al. Reference Boerio, Garavaglia and Gaia2021; Dury, De Donder, De Witte, Brosens et al. Reference Dury, De Donder, De Witte, Brosens, Smetcoren, Van Regenmortel and Verté2015; Dury et al. Reference Dury, Brosens, Smetcoren, Van Regenmortel, De Witte, De Donder and Verté2020; Serrat et al. Reference Serrat, Nyqvist, Torres, Dury and Näsman2023). The employment status of older people has ambivalent evidence of its promotion of civic engagement (Serrat et al. Reference Serrat, Nyqvist, Torres, Dury and Näsman2023). While some studies found a positive correlation between being employed and activities of civic engagement such as volunteering (European Foundation for the Improvement of Living and Working Conditions 2017) and political engagement (Boerio et al. Reference Boerio, Garavaglia and Gaia2021), other results indicated a positive association between volunteering and retirement (Van Den Bogaard et al. Reference Van Den Bogaard, Henkens and Kalmijn2014) or associational engagement and retirement (Van Den Bogaard et al. Reference Van Den Bogaard, Henkens and Kalmijn2014). Research on social roles, such as partner status, often yields different results. On the one hand, some studies found that partnered people, and especially women, were less likely to volunteer compared to non-partnered people (e.g. widowed or single) (Dury, De Donder, De Witte, Buffel et al. Reference Dury, De Donder, De Witte, Buffel, Jacquet and Verté2015; Quaranta Reference Quaranta2015). On the other hand, research by Voorpostel and Coffé (Reference Voorpostel and Coffé2012) found that partnered women were more likely to volunteer. Additionally, Lancee and Radl (Reference Lancee and Radl2014) discovered a decline in volunteering rates following divorce. Regarding political engagement, research found that married individuals were more likely to vote than their divorced, never married or widowed counterparts (Purdam and Taylor Reference Purdam and Taylor2023; Voorpostel and Coffé Reference Voorpostel and Coffé2012). Research on informal care-giving suggested that older partnered people were less likely to provide informal care-giving than non-partnered people unless one of the partners within this partnership needed help themselves (Bertogg and Strauss Reference Bertogg and Strauss2020; Boerio et al. Reference Boerio, Garavaglia and Gaia2021; Dahlberg et al. Reference Dahlberg, Berndt, Lennartsson and Schön2018). These findings highlight the nuanced and multi-faceted nature of how social roles can influence various forms of civic engagement. The abovementioned socio-structural and social capital characteristics will be further compared between the various profiles of older people’s civic engagement in this study.

Research questions

Civic engagement is a concept whose multi-dimensionality is often overlooked in gerontological research (Serrat et al. Reference Serrat, Scharf and Villar2021a). Although socio-structural and social capital resources have been identified as critical in explaining various aspects of civic engagement, more research is needed on their importance for multi-dimensional civic engagement. Previous studies have investigated concepts akin to productive engagement and volunteering profiles. However, these studies either focused on the US or other specific countries (e.g. Cheng et al. Reference Cheng, Chan, Østbye and Malhotra2022; Hinterlong Reference Hinterlong2008; Rojo-Perez et al. Reference Rojo-Perez, Rodriguez-Rodriguez, Molina-Martinez, Fernandez-Mayoralas, Sanchez-Gonzalez, Rojo-Abuin, Ayala, Rodriguez-Blazquez, Calderon-Larrañaga, Ribeiro and Forjaz2022), thus overlooking the unique context of the European population, which is characterised by distinct ageing trends, socio-economic factors, policy approaches, historical context and cultural values (Hank and Erlinghagen Reference Hank and Erlinghagen2009), or did not include essential components of civic engagement, such as associational and political engagement, in their analyses (e.g. Cheng et al. Reference Cheng, Chan, Østbye and Malhotra2021; Hank and Stuck Reference Hank and Stuck2008; van Hees et al. Reference van Hees, van den Borne, Menting and Sattoe2020).

To gain a more comprehensive understanding of older Europeans’ civic engagement, their multi-dimensional civic engagement and the combinations of activities they engage in are examined; this is followed by an assessment of the resources associated with the civic engagement profiles identified. These objectives have been translated into two research questions:

  1. 1. What are the profiles of older Europeans according to their participation in multi-dimensional civic engagement?

  2. 2. How do these profiles relate to socio-structural and social capital variables?

Data and method

Data

For this research, secondary data analysis was conducted using data from the European Quality of Life Survey (EQLS; European Foundation for the Improvement of Living and Working Conditions 2023). The EQLS examines issues such as people’s levels of happiness, their degree of life satisfaction and respondents’ opinions on how well their societies and public services are run. The EQLS survey was conducted face-to-face using computer-assisted personal interviewing (CAPI) and the sample was drawn through multi-stage, stratified, random sampling (European Foundation for the Improvement of Living and Working Conditions 2016) in 33 European countries (the 28 EU member states and five candidate countries – Albania, Republic of North Macedonia, Montenegro, Serbia and Turkey) (European Foundation for the Improvement of Living and Working Conditions 2017). Ethical considerations of the survey included voluntary informed consent and an interviewer code of conduct, which can be consulted on the EQLS website (European Foundation for the Improvement of Living and Working Conditions 2018, pp. 68–69). Per participating country, 1,000 to 2,000 respondents who lived in private households were interviewed (European Foundation for the Improvement of Living and Working Conditions 2016). This research uses Wave 4, which was collected in 2016 and is the last available wave of EQLS. All respondents were at least 18 years of age and there was no maximum age to participate (European Foundation for the Improvement of Living and Working Conditions 2017). There were in total 36,908 respondents. Respondents younger than 65 were excluded (n = 27,440), as age 65 is commonly used in research to define older people (e.g. Kafková et al. Reference Kafková, Vidovićová and Wija2018; Siira et al. Reference Siira, Olaya‐Contreras, Yndigegn, Wijk, Rolandsson and Wolf2022). Respondents who had missing values for at least one of the six components of multi-dimensional civic engagement used in this study were also excluded (n = 437), as missing values can yield deceptive results. This left us with 9,031 respondents in the final sample used. The characteristics of the sample are described in Table 1.

Table 1. Sample characteristics of older people (aged 65+) in Europe (n = 9,031)

Note: Rounding up the percentages might yield added percentages slightly higher than 100%.

Indicators of multi-dimensional civic engagement

To identify profiles of multi-dimensional civic engagement of older people, six indicator variables were included. The selection of items representing each of these indicators was based on the cited literature and the availability of items in the EQLS (European Foundation for the Improvement of Living and Working Conditions 2023). Work by Serrat et al. (Reference Serrat, Scharf, Villar, Walsh, Scharf, Van Regenmortel and Wanka2021b) and Di Gessa and Grundy (Reference Di Gessa and Grundy2017) was used to identify items for informal care-giving; by Serrat et al. (Reference Serrat, Scharf, Villar, Walsh, Scharf, Van Regenmortel and Wanka2021b) to identify items for formal volunteering and informal and formal political engagement; by Dury, De Donder, De Witte, Brosens et al. (Reference Dury, De Donder, De Witte, Brosens, Smetcoren, Van Regenmortel and Verté2015) and Putnam (Reference Putnam2000) to identify items for associational engagement; and by Seifert and Rössel (Reference Seifert, Rössel, Gu and Dupre2021) and Smith (Reference Smith2013) to identify the item for digital engagement.

For the first indicator, associational engagement, one general question was asked: ‘How frequently do you do each of the following? Participate in social activities of a club, society or association.’ The answer was indicated on a Likert scale; if the respondents indicated that they participated, regardless of frequency, they were considered engaged. For the second indicator, digital engagement, the dichotomous question was asked: ‘Have you commented on a political or social issue online in the last year?’ The remaining indicators of multi-dimensional civic engagement – volunteering, informal care-giving, and formal and informal political engagement – were constructed using multiple items. If a person answered yes to one of these items, they were considered as engaged in the indicated activity. The third indicator, volunteering, was dichotomised using three items asking respondents: ‘Did you do unpaid voluntary work in the following organisations in the last 12 months: (a) community and social services (e.g. organisations helping the elderly, young people, the disabled or others in need); (b) educational, cultural, sports or professional associations; (c) other voluntary organisations.’ The fourth indicator, informal care-giving, was constructed from three items from one question asking: ‘In general, how often are you involved in any of the following activities outside of paid work?’ The first of these items asks participants how often they do ‘caring for and/or educating your grandchildren’. The other two items ask how often respondents do ‘caring for disabled or infirm family members, neighbours or friends under age 75’ and ‘caring for disabled or infirm family members, neighbours or friends aged 75 or older’. Respondents could answer using a Likert scale with the options ‘Every day’, ‘Several days a week’, ‘Once or twice a week’, ‘Less often’, ‘Never’. The items were combined into one variable with four answer options: (a) no informal care-giving; (b) caring for disabled or infirm family members, neighbours or friends; (c) caring for grandchildren; (d) caring for both. As fifth indicator, the informal political engagement variable was constructed using five dichotomous items based on the following questions: ‘(a) Did you do unpaid voluntary work through social movements (for example environmental, human rights) or charities (for example fundraising, campaigning) in the last 12 months? And, over the last 12 months, have you done any of the following activities: (b) attended a protest or demonstration; (c) signed a petition, including an email or online petition; (d) contacted a politician or public official (other than routine contact arising from the use of public services); (e) boycotted certain products?’ The sixth and last indicator of multi-dimensional civic engagement, formal political engagement, was measured using two dichotomous items: ‘Did you do unpaid voluntary work through political parties or trade unions in the last 12 months?’ and ‘Did you attend a meeting of a trade union, political party or political action group over the last 12 months?’ It is important to note that if the respondents took part in one sub-item of the indicators for multi-dimensional civic engagement, they were considered as being engaged in that indicator.

Covariates

The descriptive statistics of the covariates are presented in Table 1. Age, gender and migration background are used as control variables (Ackermann Reference Ackermann2019). Gender is dichotomous with female and male as options, while age is a self-made categorical variable with the following categories in years: 65–69, 70–74, 75–79, 80–84, 85–89 and 90+. Respondents’ migration background was measured with the use of one variable: ‘What country were you born in?’ This variable was recoded into three answer profiles: native-born, foreign-born European, foreign-born non-European. For socio-structural resources, education was measured with the question: ‘What is the highest level of education you completed?’ Educational level was recoded from nine into three groups in EQLS based on the International Standard Classification of Education (ISCED) 2011 codes: lower secondary or primary (ISCED 0–2), upper secondary or post-secondary (ISCED 3–4) and tertiary (ISCED 5–8) education (European Foundation for the Improvement of Living and Working Conditions 2023; Eurostat 2022). To measure respondents’ perceived economic situation, the following question was asked: ‘A household may have different sources of income and more than one household member may contribute to it. Thinking of your household’s total monthly income: is your household able to make ends meet?’ The six answer options were dichotomised into easily (very easily, easily, fairly easily) and with difficulty (with some difficulty, with difficulty, with great difficulty). To assess self-rated health, a five-point scale (very good, good, fair, poor, very poor) was used to answer the question: ‘In general, how is your health?’ The variable was dichotomised into good health (very good, good) and less than good health (fair, bad, very bad). For social capital covariates, the work situation was assessed by evaluating the economic status codes filled by respondents in the EQLS 2016 questionnaire (‘Which of these profiles best describes your situation?’). The 12 response alternatives were recoded into three: retired, employed (or self-employed) and other (unemployed, permanently sick or disabled, homemaker, other). Respondents’ partner status had two answer options: the partner lives in the same household or there is no partner in the household.

Analytical strategy

Descriptive statistics were used to display the sample’s characteristics and to identify their level of multi-dimensional civic engagement. To answer Research Questions 1 and 2, that is, to determine whether there exist unobserved and diverse groups of older people based on their diversity in participation in civic engagement, latent class analysis (LCA) was utilised (Weller et al. Reference Weller, Bowen and Faubert2020). Research that studies multi-dimensional concepts (e.g. social exclusion; Van Regenmortel et al. Reference Van Regenmortel, De Donder, Smetcoren, Lambotte, De Witte and Verté2018) uses LCA to keep the distinction between the different components. This study uses a three-step LCA (Weller et al. Reference Weller, Bowen and Faubert2020) in the program Latent GOLD 6.0 (Vermunt and Magidson Reference Vermunt and Magidson2021). First, a latent class model is built for a set of indicator variables. Second, the cases are assigned to latent classes. Third, the latent classification scores from Step 2 are related to external variables of interest (Bakk and Vermunt Reference Bakk and Vermunt2021). The three-step model is used as it makes more intuitive sense to first construct a latent class model before connecting it to covariates or distant outcomes (Nylund-Gibson and Choi Reference Nylund-Gibson and Choi2018; Vermunt Reference Vermunt2010; Weller et al. Reference Weller, Bowen and Faubert2020). Latent GOLD 6.0 corrects the classification error to avoid bias (Vermunt and Magidson Reference Vermunt and Magidson2021). To account for the occurrence of local maxima, multiple starting points (500) and iterations (2,000) were used throughout all steps of the analysis (Vermunt and Magidson Reference Vermunt and Magidson2016). From these multiple starting points and iterations, Latent GOLD automatically shows the best-fitting model.

In Step 1 of the three-step method, a latent class model was estimated for the indicators of multi-dimensional civic engagement. In this process, the fitting indicators and class sizes were determined. During this first step of the analysis a one-class model was estimated, and then classes were added until a model was found that best met the fit indices. As older people who do not engage in any civic activities are included in the LCA, the ‘known class’ function was used to group the non-engaged into one class. Multiple fit indices as well as the theoretical understanding of civic engagement were taken into account (Nylund-Gibson and Choi Reference Nylund-Gibson and Choi2018). Model fit was explored using the following statistical criteria: the BIC (Bayesian information criterion), with a lower BIC indicating better model fit (Nylund et al. Reference Nylund, Asparouhov and Muthén2007); the L2 likelihood ratio goodness-of-fit, with a non-significant Bootstrap p-value indicating whether a model is statistically worse than the model with one class less (Vermunt and Magidson Reference Vermunt and Magidson2016); and the AIC (Akaike information criterion), where a lower value, just like the BIC, indicates a better model fit (Akaike Reference Akaike1974; Weller et al. Reference Weller, Bowen and Faubert2020). Class size was also considered when choosing a fitting model. When class prevalence is substantially unequal, classes are typically difficult to recover, so more than 5 per cent of the sample is desirable per latent class (Nylund-Gibson and Choi Reference Nylund-Gibson and Choi2018). The sample can be considered large enough as the number of respondents is above 1,000 – which is the highest minimum found in the literature that accurately identifies correct models based on the information criteria (IC) and likelihood tests (Aflaki et al. Reference Aflaki, Vigod and Ray2022).

In Step 2 the cases were allocated to their most fitting latent classes, based on inclusion probabilities, which is the likelihood that a random case in the sample will fall under any latent class (Naldi and Cazzaniga Reference Naldi and Cazzaniga2020). The classes were saved and used in further analyses.

In Step 3, covariates (age, migration background, educational level, perceived economic situation, subjective health, employment status, having a partner in the household) were related to the latent classification scores saved in Step 2 (Vermunt and Magidson Reference Vermunt and Magidson2020), through a multi-nominal logistic regression (Vermunt and Magidson Reference Vermunt and Magidson2016). The findings of the pairwise Wald tests (created during the multi-nominal logistic regression in Step 3) were used to see whether the profiles of multi-dimensional civic engagement differed significantly in terms of the covariates.

Results

Participation of older Europeans in multi-dimensional civic engagement

Within the entire sample (n = 9,031), one-third (32.0 per cent) of the surveyed population did not participate in any civic activities. Roughly another third (32.2 per cent) participated in one activity. This implies that 35.8 per cent of the sample was engaged in more than one civic activity. Table 1 shows that when more civic activities are combined, people are less likely to be in that group (e.g. only 0.7 per cent were engaged in six different civic activities).

Informal care-giving was the most prevalent indicator of civic engagement, at 49.9 per cent: taking care of grandchildren was the most popular activity, displayed by 37.5 per cent of the sample. Formal political engagement was less common, with 7.2 per cent attending meetings or working or volunteering for a union or political party. As for digital engagement, 4.0 per cent commented on political or social issues online.

Profiles of older people based on their multi-dimensional civic engagement

An LCA was performed and, based on the lowest BIC indicator, the six-class model was selected (L2 = 228.870; p < 0.001; df = 201; AIC = 53,729.289; BIC = 54,106.035) (Nylund-Gibson and Choi Reference Nylund-Gibson and Choi2018; Weller et al. Reference Weller, Bowen and Faubert2020). It is important to note that none of the other fit criteria pointed towards a six-class model (Table 2). Inconsistent findings across fit indicators are common in LCA models (Weller et al. Reference Weller, Bowen and Faubert2020). The six-class model was preferred over the seven-class model, not only because the six-class model had a lower BIC value but also because the seven-class model had a profile representing less than 3 per cent of the population. This is not desirable as classes are typically difficult to recover when class prevalence is substantially unequal (Nylund-Gibson and Choi Reference Nylund-Gibson and Choi2018).

Table 2. Model fit indicators of latent class analysis on multi-dimensional civic engagement (n = 9,031)

Notes: Lowest BIC is bolded.

BIC: Bayesian information criterion; AIC: Akaike information criterion; LL: log likelihood; Npar: number of parameters; L2: the likelihood ratio goodness-of-fit value:classification error; Entropy R2: entropy coefficient of determination.

The LCA identified the following six distinct profiles of civic engagement among older people:

  1. 1. Non-Engaged (Profile 0)

  2. 2. Informal Care-Givers (Profile 1)

  3. 3. Association-Engaged (Profile 2)

  4. 4. Volunteers (Profile 3)

  5. 5. Politically Engaged (Profile 4)

  6. 6. Diversely Engaged (Profile 5)

Table 3 shows the profiles of multi-dimensional civic engagement and the likelihood of being engaged in multi-dimensional civic activities per profile as well as the overall likelihood of engagement of the sample.

Table 3. Likelihood of being involved in multi-dimensional civic engagement: profiles from the latent class analysis (n = 9,031; in %)

Notes: Rounding up the percentages might yield percentages slightly higher than 100%.

Profile 0: Non-engaged; Profile 1: Informal Care-Givers; Profile 2: Association-Engaged; Profile 3: Volunteers; Profile 4: Politically Engaged; Profile 5: Diversely Engaged.

1Sweden, 2Bulgaria, 3Germany, 4Serbia, 5Turkey, 6Denmark, 7Netherlands, 8Romania, 9Slovakia

As noted before in the descriptives, 32.0 per cent of older European people did not participate in any form of civic engagement. They can be found in Profile 0, the Non-engaged. The first profile, the Informal Care-Givers, comprised 22.9 per cent of the sample. They had a low likelihood of participating in civic activities other than informal care-giving: 0.9 per cent in associational activities, 0.1 per cent in informal political engagement, 1.2 per cent in formal political engagement, 0.1 per cent in volunteering and 0.3 per cent in digital engagement. However, there was a high likelihood of caring for grandchildren (62.2 per cent); caring for disabled or infirm family members, neighbours or friends (21.2 per cent); or both (16.6 per cent). Especially the likelihood of caring for grandchildren was twice as high compared to the other profiles (see Table 3).

The second profile, the Association-Engaged, represented 12.3 per cent of the sample and was characterised by a strong emphasis on associational engagement (100 per cent likelihood; overall 34.6 per cent likelihood). However, this profile had lower engagement in other civic activities, with a 30.4 per cent likelihood of being engaged in caring for grandchildren; a 10.9 per cent likelihood of caring for a disabled or infirm family member, neighbour or friend; and a 10.2 per cent likelihood of doing both. Participation in other civic activities was very unlikely, with only 0.1 per cent volunteering, 0.8 per cent digitally engaged, 2.9 per cent formally politically engaged and 0.1 per cent informally politically engaged.

The third profile is identified as the Volunteers and comprised 11.7 per cent of the sample, focusing primarily on volunteering activities. There was a high likelihood (99.8 per cent) of volunteering within this profile. Compared to the first two profiles, individuals in this profile were more active in other civic activities. Associational engagement was prevalent, with a 69.8 per cent likelihood of engagement; informal care-giving was also common, with a 61.3 per cent likelihood. While digital engagement (1.3 per cent likelihood) and formal political engagement (6.4 per cent likelihood) were still not common, informal political engagement (25.4 per cent ) was more likely, even higher than the sample’s overall likelihood of engagement in informal political activities (22.0 per cent likelihood).

The fourth profile, the Politically Engaged, represented 11.5 per cent of the sample. People in this profile had a relatively high likelihood of engaging in both formal (14.8 per cent likelihood; overall 7.2 per cent likelihood) and informal (86.6 per cent likelihood; overall 22.0 per cent likelihood) political activities. There was a 46.2 per cent likelihood of participating in associational activities, while volunteering had only a 3.1 per cent likelihood. This profile also had a 29.1 per cent likelihood of being engaged in caring for grandchildren and a 13.1 per cent likelihood of caring for disabled or infirm family members, neighbours or friends. The likelihood of providing care for both grandchildren and disabled or infirm individuals was also 13.1 per cent.

The fifth and last profile is the Diversely Engaged, representing 9.6 per cent of the sample. Older people in this sample showed a relatively high likelihood of engagement in all indicators. Volunteering (97.7 per cent likelihood), associational engagement (90.0 per cent likelihood) and informal political engagement (93.6 per cent likelihood) were particularly prominent in this profile. Additionally, digital engagement had a 22.4 per cent likelihood and formal political engagement had a 42.9 per cent likelihood – the highest among all profiles, surpassing even Political Engagement (14.8 per cent likelihood; overall 7.2 per cent likelihood). Despite their high likelihood of being involved in multiple indicators of civic engagement, the older people in this profile also had a high likelihood of informal care-giving. They were less likely to care solely for grandchildren (21.0 per cent likelihood), but more likely to care for both grandchildren and disabled or infirm family members, neighbours or friends (26.7 per cent likelihood; overall 10.7 per cent likelihood).

The findings also demonstrate the diversity observed across countries, with notable differences observed between the Non-engaged group (5.5 per cent in Sweden to 58.5 per cent in Bulgaria) and the less diverse patterns seen within the Association-Engaged and Volunteers profiles (respectively, 1.6 per cent in Turkey to 22.2 per cent in Denmark and 1.2 per cent in Turkey to 21.2 per cent in the Netherlands). It is noteworthy that Sweden showed a 30.0 per cent likelihood of being part of the Politically Engaged profile and a 32.6 per cent likelihood of being part of the Diversely Engaged profile, while only showing a 5.5 per cent likelihood of being Non-engaged.

Comparing profiles on covariates

Table 4 shows the relation between the profiles and the covariates. According to the Wald tests, fitting into the six civic engagement profiles was significantly associated with gender (Wald = 37.19; p < 0.001), age (Wald = 269.21; p < 0.001), migration background (Wald = 22.99; p < 0.05), educational level (Wald = 431.27; p < 0.001), perceived economic situation (Wald = 286.23; p < 0.001), self-rated health (Wald = 157.35; p < 0.001), employment status (Wald = 29.84; p < 0.001) and whether the partner lives in the household (Wald = 117.84; p < 0.001).

Table 4. Probabilities of covariates of socio-structural resources on multi-dimensional civic engagement: latent class analysis (n = 9,031; in %)

Notes: *p < 0.001; **p < 0.01; ***p<0.05.

Rounding up the percentages might yield percentages slightly higher than 100%. All covariates are included simultaneously.

Profile 0: Non-engaged; Profile 1: Informal Care-Givers; Profile 2: Association-Engaged; Profile 3: Volunteers; Profile 4: Politically Engaged; Profile 5: Diversely Engaged.

Both the Non-engaged (62.6 per cent) and the Informal Care-Givers (58.8 per cent) exhibited a higher percentage of individuals with lower secondary or primary education compared to the overall percentage (50.4 per cent). By contrast, the Association-Engaged (46.3 per cent) and Volunteers profiles (45.3 per cent) had a lower percentage of individuals with lower secondary or primary education, and the Politically Engaged (33.7 per cent) and Diversely Engaged (21.7 per cent) profiles had an even lower percentage. Higher educated individuals were more prevalent in the Diversely Engaged group (47.9 per cent) and among the Politically Engaged (31.0 per cent) compared to the overall likelihood (18.5 per cent). For perceived economic situation, Non-engaged (58.7 per cent) and Informal Care-Givers (57.2 per cent) were more likely to experience financial difficulties compared to the other profiles. Conversely, the Diversely Engaged had the highest likelihood of having no financial difficulties, with 79.6 per cent of the profile reporting no financial hardships, exceeding the overall percentage (54.5 per cent). For health, the Non-engaged had a higher likelihood of belonging to the group with less-than-good health (74.5 per cent) compared to the overall percentage (61.7 per cent) as well as Informal Care-Givers (68.6 per cent). Conversely, the Association-Engaged (46.0 per cent), Volunteers (48.5 per cent) and Politically Engaged (50.6 per cent) profiles were relatively more likely to not have less than good health. The Diversely Engaged profile stood out with the highest likelihood of having good health, at a self-reported 60.0 per cent.

In terms of social capital resources and employment, the Non-engaged had the lowest employment rate, at 2.7 per cent, followed by the Informal Care-Givers with 2.9 per cent. The Politically Engaged profile (7.3 per cent) and the Diversely Engaged profile (10.2 per cent) had relatively higher employment rates compared to the overall likelihood of 5.4 per cent. Informal Care-Givers were most likely to belong to the ‘other’ category, at 7.6 per cent (overall 5.0 per cent). The ‘other’ category included individuals who are not retired but are also not employed owing to various reasons such as being a homemaker or being unable to work. The remaining profiles had a lower likelihood of belonging to this ‘other’ employment group: Non-engaged (5.6 per cent), Association-Engaged (3.1 per cent), Volunteers (3.3 per cent), Politically Engaged (3.3 per cent) and Diversely Engaged (3.0 per cent). Additionally, compared to the overall percentage of 50.0 per cent, the Non-engaged (61.6 per cent) and the Association-Engaged (52.1 per cent) were more likely not to have a partner in the household. On the other hand, the other fourprofiles were more likely to have a partner in the same household: Informal Care-Givers (57.5 per cent), Volunteers (51.8 per cent), Politically Engaged (56.9 per cent) and Diversely Engaged (61.8 per cent).

Discussion

To gain insight into whether older people engage in multiple civic activities simultaneously, this article studied profiles of their civic engagement to determine which civic activities are combined. It also identified the socio-structural and social capital characteristics of older people who belong to these created profiles.

Six distinct profiles were identified among the older European sample. The biggest engaged profile, the Informal Care-Givers, participated mostly in only one activity, namely informal care-giving. The Association-Engaged had a high likelihood of associational engagement but still showed more than a 50 per cent likelihood of participating in informal care-giving too. Both these profiles had a low likelihood of participating in any other type of civic engagement. Although the share of informal care-giving was high in this study, research suggests that helping behaviour might be underestimated since some people do not recognise or acknowledge their role as informal care-givers (Verbakel Reference Verbakel2018). Furthermore, owing to the data at hand, informal care-giving was studied in this research, thus overlooking other forms of informal helping behaviours such as giving financial or emotional support, and other pro-social behaviours (e.g. Dury et al. Reference Dury, Brosens, Pan, Principi, Smetcoren, Perek-Białas and De Donder2023; Pego and Nunes Reference Pego and Nunes2018; Serrat et al. Reference Serrat, Scharf and Villar2021a). Future gerontological research on informal helping behaviours should acknowledge other types of contributions made by older people themselves, an issue that is still relatively unexplored.

The Volunteer, Politically Engaged and Diversely Engaged profiles evidenced involvement in multiple civic activities simultaneously, but in accordance with their profile name, each with a focus on different aspects of civic engagement. The people in these three more diversely engaged profiles all still showed a relatively high likelihood of engagement in informal care-giving, reiterating the importance of this dimension when studying the civic engagement of older people. The profile that stood out the most in terms of simultaneous engagement was the Diversely Engaged. With 9.6 per cent of the sample belonging in this ‘super-engaged’ profile, a considerable number of older Europeans are civically engaged in several activities simultaneously.

The more diversely engaged profiles support the extension theory (Strauss Reference Strauss2021), which may be explained by the fact that older people involved in volunteering and political engagement are more likely to be involved in other civic activities as well – or, as Musick and Wilson (Reference Musick and Wilson2008, p. 460) put it, ‘participation breeds participation’. Moreover, older people who actively participate in these civic activities appear likely to develop social networks that might encourage their engagement in additional civic activities (Putnam Reference Putnam2000; Verba et al. Reference Verba, Scholzman and Brady1995).

Nevertheless, informal care-giving and associational engagement do not necessarily result in engagement in other civic activities, as evidenced by the Informal Care-Giver and Association-Engaged profiles. The results from the Informal Care-Giver profile, specifically, are consistent with the role overload theory as these older people are mainly engaged in one activity. It is plausible that the intensity of care-giving is high, which may prevent informal care-givers from engaging in other forms of civic activity (e.g. Bertogg and Strauss Reference Bertogg and Strauss2020; Strauss Reference Strauss2021). This is in line with Dury, De Donder, De Witte, Brosens et al. (Reference Dury, De Donder, De Witte, Brosens, Smetcoren, Van Regenmortel and Verté2015), who found informal care-giving to have a negative relationship with endeavours like formal volunteering and associational activities. As informal care-giving is often done out of a feeling of responsibility or is demand-based, they can cause care-giving burdens because of stressors and perceptual factors (Hermansen Reference Hermansen2016; Lai Reference Lai2010). Nevertheless, it is intriguing that the Association-Engaged profile did not show involvement in activities beyond associational engagement or informal care-giving, contrary to the conclusions reached by Dury, De Donder, De Witte, Brosens and colleagues (Reference Dury, De Donder, De Witte, Brosens, Smetcoren, Van Regenmortel and Verté2015), who suggested a correlation between associational engagement and volunteering, albeit in a study focused on Flanders, the northern part of Belgium. Additional research is warranted to explore this discrepancy. Considering this variety in simultaneous engagement of older people, formal political engagement (7.2 per cent) and digital engagement (4.0 per cent) stood out as the least practised activities. The low percentage of political engagement may be attributed to the measurement used, which did not include voting, a common form of civic engagement for older people (Melo and Stockemer Reference Melo and Stockemer2014). Serrat et al. (Reference Serrat, Petriwskyj, Villar and Warburton2017) identified obstacles to retaining older people in political organisations, including lower means to participate (health, age, time availability), motive-related hindrances (losing interest in the organisation’s mission, shifting priorities, fulfilling initial goals), organisational problems (change in philosophy) and the perception of non-necessity of their contribution. This might explain the low percentage of formal political engagement in this study.

Regarding digital engagement, older people appeared less active compared to younger age groups (65–69: 7.8 per cent; 90+: 1.3 per cent). The data for this study was collected in 2016, though, and more recent data could yield different results owing to increasing digital use among older individuals. Additionally, the study’s measurement of digital engagement was limited to one item, whereas recent studies assess multiple forms of digital engagement, such as forwarding tweets/emails and participation in online political discussions (Rudnik et al. Reference Rudnik, Patskanick, Miller, D’Ambrosio and Coughlin2020).

Out of all the profiles, the Non-engaged had fewer resources, such as lower education, lower perceived economic situation, poorer health and older age, compared to the other profiles. This strengthens the notion that having fewer socio-structural and social capital resources can be an obstacle to being civically engaged. However, after the Non-engaged profile, the Informal Care-Givers were shown to have the fewest resources. This aligns with other research suggesting that informal care-giving is less dependent on income and socio-economic status, as it is often in response to specific requests for assistance (Hermansen Reference Hermansen2016). On the other hand, the Volunteer, Politically Engaged and Diversely Engaged profiles evidenced higher levels of socio-structural resources. The Politically Engaged and Diversely Engaged showed higher educational level and younger age, in line with studies linking education to political engagement, volunteering and informal care-giving (e.g. Dury, De Donder, De Witte, Buffel et al. Reference Dury, De Donder, De Witte, Buffel, Jacquet and Verté2015; Hämäläinen et al. Reference Hämäläinen, Tanskanen and Danielsbacka2023; Nie and Hillygus Reference Nie, Hillygus, Ravitch and Viteritti1996; Verba et al. Reference Verba, Scholzman and Brady1995). The causal mechanisms between educational level and political engagement and volunteering have been extensively studied, including the meaning of higher status, political socialisation and skills acquisition (Musick and Wilson Reference Musick and Wilson2008; Willeck and Mendelberg Reference Willeck and Mendelberg2022). The Diversely Engaged reported even better health, income and educational levels than the Politically Engaged, which could explain their higher likelihood of being digitally engaged, as research suggests that the resources of older individuals are crucial factors in predicting their digital engagement (Kebede et al. Reference Kebede, Ozolins, Holst and Galvin2022)

Older people in the Politically Engaged and Diversely Engaged profiles were also more likely to be employed, which is consistent with findings suggesting a positive correlation between employment and political engagement in older people (Boerio et al. Reference Boerio, Garavaglia and Gaia2021). An important note to the current study is that the measurement of formal political engagement included trade union activities, which are typically more prevalent among employed individuals. By contrast, the study found that volunteering and working may have a substitution effect, with volunteering requiring more time investment than certain forms of political engagement (Bertogg and Strauss Reference Bertogg and Strauss2020).

Limitations

This study is not without limitations. Parallel to previous research, the choice was made to examine engagement versus non-engagement instead of time invested, which prevents us from making conclusions about the intensity of respondents’ civic engagement (e.g. Dury, De Donder, De Witte, Brosens et al. Reference Dury, De Donder, De Witte, Brosens, Smetcoren, Van Regenmortel and Verté2015; Serrat et al. Reference Serrat, Nyqvist, Torres, Dury and Näsman2023). This decision was made as not all items were documented with a measurement of intensity (European Foundation for the Improvement of Living and Working Conditions 2023). Another limitation is that there might be potential overlap among the six indicators of multi-dimensional civic engagement. The overlap was allowed to accentuate the multi-dimensionality of older people’s activities (Leedahl et al. Reference Leedahl, Sellon and Gallopyn2017). An example of overlap is the distinction between digital and informal political engagement. Digital engagement might also be considered part of informal political engagement, although in this study the indicators were considered separately.

Regarding the generalisability of the current article, it is important to consider the measurement of the indicators of civic engagement described in the methodological section, as levels of engagement might be affected by the way they are measured. For instance, informal care-giving includes various forms of care, including the provision of care to disabled or infirm family members, neighbours or friends, as well as the care of grandchildren. While separating these forms of informal care-giving might produce different profiles, we chose to combine them as they all respond to a request for care-giving. The authors also were not able to separate care-giving within and outside the household, making it redundant to separate the types of care-giving in general (Di Gessa and Grundy Reference Di Gessa and Grundy2017; Schmidt et al. Reference Schmidt, Ilinca, Schulmann, Rodrigues, Principi, Barbabella, Sowa, Golinowska, Deeg and Galenkamp2016; Serrat et al. Reference Serrat, Scharf and Villar2021a). This distinction of informal care-giving is important as care-giving within the household is often less voluntary (Choi et al. Reference Choi, Burr, Mutchler and Caro2007) and less frequently combined with other civic activities (Strauss Reference Strauss2021) compared to care-giving outside the household.

In addition, a study by Abraham et al. (Reference Abraham, Helms and Presser2009) found that surveys on topics such as volunteering tend to overestimate other pro-social activities owing to there being a strong link between the reasons for volunteering and the reasons for taking part in the survey, which can lead to response bias. It is also worth reiterating that the data presented in this study was published in 2016 and that the level of civic engagement among older people may have changed since then. The selection of this dataset over similar databases was based on the inclusion of multi-dimensional civic engagement variables.

The use of LCA analysis appears to be advantageous in identifying different profiles of civic engagement of an older population. However, forthcoming research could broaden its scope by incorporating additional resource covariates like available time and energy to identify supplementary resources and their influence on multi-dimensional civic engagement. Including not only micro-level but also meso-level (living environment) and macro-level (socio-political context) resources may add valuable insights (Serrat et al. Reference Serrat, Scharf, Villar and Gómez2020). Given the significant variations observed across the European countries in this study, alongside the well-documented diversity in political cultures within Europe (e.g. Hank and Erlinghagen Reference Hank and Erlinghagen2009), future investigations could examine the nuanced differences across Europe to provide a more comprehensive understanding of the dynamics at play.

Conclusion

Articles such as the present study play a vital role in broadcasting the contributions of older European individuals in civic engagement, revealing diverse profiles and identifying associated resources diversifying civic engagement. The main finding of this study emphasised how varied civic engagement is among this sample of older people. The study specifically showed that a subset of older people evidences high levels of civic engagement by taking part in a variety of activities simultaneously. It is noteworthy that a sizeable section of the sample participated in a smaller number of civic activities simultaneously. Remarkably, even among those engaged in fewer civic activities, there is substantiated engagement in informal care-giving. This study suggests the possibility that some older people may experience role overload, where their commitment to intense helpful behaviours may cause them to scale back on other civic activities. The discovery of these unique profiles highlighted the complex interactions among diverse civic engagement strategies and deepens our knowledge of older people’s civic engagement. These results suggest the need for targeted interventions to foster civic engagement among older adults, taking into account the circumstances and preferences of the diverse older population.

The profiles evidenced that less-explored aspects in the civic engagement literature such as informal care-giving constitute a significant part of older people’s societal engagement, indicating that both researchers and policy makers need to value and include informal care-giving when studying or promoting civic engagement among older people. Digital engagement also necessitates further attention as future research and practice should consider barriers to older people’s digital engagement, by developing interventions tailored to the older population towards ensuring opportunities to engage digitally – given that digitalisation is increasingly influencing civic engagement among older adults.

Additionally, this study contributed to the existing literature on identifying socio-structural and social capital resources linked to specific civic engagement profiles. Policy makers and political and other civic organisations should dedicate additional efforts to reach groups that are less touched by certain civic activities and are thus underrepresented in aspects like the political sphere. Especially older people with lower educational levels, poorer subjective health and lower perceived economic situation – while their efforts in associational engagement and informal care-giving should not be underestimated – need to be approached in alternative ways for other civic activities, as the current endeavours do not seem to favour their inclusion in activities beyond those they already perform.

Financial support

This research was conducted within the CIVEX ‘Exclusion from civic engagement of a diverse older population: Features, experiences, and policy implications’ project, led by Dr Rodrigo Serrat (University of Barcelona), and received funding through the Joint Programme Initiative: More Years, Better Lives. This particular publication is also made possible through the funding awarded by the Belgian Science Policy Office (B2/21E/P3/CIVEX), the Academy of Finland (345022) and the Spanish State Research Agency (PCI2021-121951). For more information on CIVEX, visit https://civex.eu/.

Competing interests

The authors have no known conflicts of interest to disclose.

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Figure 0

Table 1. Sample characteristics of older people (aged 65+) in Europe (n = 9,031)

Figure 1

Table 2. Model fit indicators of latent class analysis on multi-dimensional civic engagement (n = 9,031)

Figure 2

Table 3. Likelihood of being involved in multi-dimensional civic engagement: profiles from the latent class analysis (n = 9,031; in %)

Figure 3

Table 4. Probabilities of covariates of socio-structural resources on multi-dimensional civic engagement: latent class analysis (n = 9,031; in %)