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Chapter 23 - Algorithms and Routine Dynamics

from Part III - Themes in Routine Dynamics Research

Published online by Cambridge University Press:  11 December 2021

Martha S. Feldman
Affiliation:
University of California, Irvine
Brian T. Pentland
Affiliation:
Michigan State University
Luciana D'Adderio
Affiliation:
University of Edinburgh
Katharina Dittrich
Affiliation:
University of Warwick
Claus Rerup
Affiliation:
Frankfurt School of Finance and Management
David Seidl
Affiliation:
University of Zurich
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Summary

Organizations increasingly rely upon algorithms to change their routines—with positive, negative, or messy outcomes. In this chapter, we argue that conceptualizing algorithms as an integral part of an assemblage provides scholars with the ability to generate novel theories about how algorithms influence routine dynamics. First, we review existing research that shows how algorithms operate as an actant making decisions; encode the intentions of designers; are entangled in broader assemblages of theories, artifacts, actors, and practices; and generate performative effects. Second, we elucidate five analytical approaches that can help management scholars to identify new connections between routine assemblages, their elements, and organizational outcomes. Finally, we outline directions for future research to explore how studying algorithms can advance our understanding of routine dynamics and how a routine dynamics perspective can contribute to the understanding of algorithms in strategy and organizational theory more broadly .

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Publisher: Cambridge University Press
Print publication year: 2021

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