Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by Crossref.
Roel, Verbelen
Antonio, Katrien
and
Claeskens, Gerda
2014.
Multivariate Mixtures of Erlangs for Density Estimation Under Censoring and Truncation.
SSRN Electronic Journal,
Roel, Verbelen
Antonio, Katrien
and
Claeskens, Gerda
2015.
Multivariate Mixtures of Erlangs for Density Estimation Under Censoring and Truncation: Additional Examples.
SSRN Electronic Journal,
Sheldon Lin, X.
and
Willmot, Gordon E.
2015.
Wiley StatsRef: Statistics Reference Online.
p.
1.
Reynkens, Tom
Roel, Verbelen
Beirlant, Jan
and
Antonio, Katrien
2016.
Modeling Censored Losses Using Splicing: A Global Fit Strategy with Mixed Erlang and Extreme Value Distributions.
SSRN Electronic Journal ,
Badescu, Andrei L
Lin, X. Sheldon
and
Tang, Dameng
2016.
A Marked Cox Model for the Number of IBNR Claims: Estimation and Application.
SSRN Electronic Journal ,
Antonio, Katrien
and
Van Oirbeek, Robin
2016.
A Multi-State Approach and Flexible Payment Distributions for Micro-Level Reserving in General Insurance.
SSRN Electronic Journal,
Miljkovic, Tatjana
and
Grün, Bettina
2016.
Modeling loss data using mixtures of distributions.
Insurance: Mathematics and Economics,
Vol. 70,
Issue. ,
p.
387.
Yin, Cuihong
and
Lin, X. Sheldon
2016.
EFFICIENT ESTIMATION OF ERLANG MIXTURES USING iSCAD PENALTY WITH INSURANCE APPLICATION.
ASTIN Bulletin,
Vol. 46,
Issue. 3,
p.
779.
Verbelen, Roel
Antonio, Katrien
and
Claeskens, Gerda
2016.
Multivariate mixtures of Erlangs for density estimation under censoring.
Lifetime Data Analysis,
Vol. 22,
Issue. 3,
p.
429.
Reynkens, Tom
Verbelen, Roel
Beirlant, Jan
and
Antonio, Katrien
2017.
Modelling censored losses using splicing: A global fit strategy with mixed Erlang and extreme value distributions.
Insurance: Mathematics and Economics,
Vol. 77,
Issue. ,
p.
65.
2017.
Reinsurance.
p.
309.
Cui, Yanhe
Yang, Jun
and
Huang, Shuo
2018.
Interval Estimation of Process Capability Indices Based on the Quality Data of Supplied Products.
p.
400.
Miljkovic, Tatjana
and
Fernández, Daniel
2018.
On Two Mixture-Based Clustering Approaches Used in Modeling an Insurance Portfolio.
Risks,
Vol. 6,
Issue. 2,
p.
57.
Gui, Wenyong
Huang, Rongtan
and
Lin, X. Sheldon
2018.
Fitting the Erlang mixture model to data via a GEM-CMM algorithm.
Journal of Computational and Applied Mathematics,
Vol. 343,
Issue. ,
p.
189.
Cui, Yanhe
and
Yang, Jun
2018.
Interval Estimation of Process Capability Indices Based on the Weibull Distributed Quality Data of Supplier Products.
p.
86.
Pocuca, Nikola
Jevtic, Petar
McNicholas, Paul
and
Miljkovic, Tatjana
2018.
Modeling Frequency and Severity of Claims with the Zero-Inflated Generalized Cluster-Weighted Models.
SSRN Electronic Journal ,
Bhati, Deepesh
and
Ravi, Sreenivasan
2018.
On generalized log-Moyal distribution: A new heavy tailed size distribution.
Insurance: Mathematics and Economics,
Vol. 79,
Issue. ,
p.
247.
Fung, Tsz Chai
Badescu, Andrei L.
and
Lin, X. Sheldon
2019.
Multivariate Cox Hidden Markov models with an application to operational risk.
Scandinavian Actuarial Journal,
Vol. 2019,
Issue. 8,
p.
686.
Fung, Tsz Chai
Badescu, Andrei L.
and
Lin, X. Sheldon
2019.
A class of mixture of experts models for general insurance: Theoretical developments.
Insurance: Mathematics and Economics,
Vol. 89,
Issue. ,
p.
111.
Badescu, Andrei L.
Chen, Tianle
Lin, X. Sheldon
and
Tang, Dameng
2019.
A MARKED COX MODEL FOR THE NUMBER OF IBNR CLAIMS: ESTIMATION AND APPLICATION.
ASTIN Bulletin,
Vol. 49,
Issue. 03,
p.
709.