Theorizing routines with computational sequence analysis: a critical realism framework
Theorizing routines with computational sequence analysis: a critical realism framework
We develop a methodological framework to develop process theories on routines by leveraging large volumes of digital trace data following critical realism principles. Our framework begins with collecting and preprocessing digital trace data, corresponding to the empirically observed experience of critical realism. In the second and third steps of the framework, we identify a finite set of similar repetitive patterns (routines) through computational analysis. We accomplish this by combining frequent subsequence mining and clustering analysis to transform empirical observation into a set of routines that correspond to actual happening in critical realism. Then, we employ a retroduction approach to identify generative mechanisms of the routines. In the final step, we validate the generative mechanisms by evaluating proposed processual explanations and/or eliminating alternatives. We provide an illustrative example of developing a process theory in relation to the collaboration pattern in Wikipedia.
Critical Realism, Digital Trace Data, Process Studies, Routines, Sequence Analytics
589-630
Zhang, Zhewei
8210d811-e0dc-4ca4-8cdf-1443aa28b567
Lee, Habin
bab650b0-df62-40c1-bb0e-53d778ade29d
Yoo, Youngjin
1bddead9-9a1c-4b1a-8c5f-bd63b096fd3b
Choi, Youngseok
928c489e-7c5b-42fc-bad8-77ce717ba106
3 March 2022
Zhang, Zhewei
8210d811-e0dc-4ca4-8cdf-1443aa28b567
Lee, Habin
bab650b0-df62-40c1-bb0e-53d778ade29d
Yoo, Youngjin
1bddead9-9a1c-4b1a-8c5f-bd63b096fd3b
Choi, Youngseok
928c489e-7c5b-42fc-bad8-77ce717ba106
Zhang, Zhewei, Lee, Habin, Yoo, Youngjin and Choi, Youngseok
(2022)
Theorizing routines with computational sequence analysis: a critical realism framework.
Journal of the Association for Information Systems, 23 (2), .
(doi:10.17705/1jais.00734).
Abstract
We develop a methodological framework to develop process theories on routines by leveraging large volumes of digital trace data following critical realism principles. Our framework begins with collecting and preprocessing digital trace data, corresponding to the empirically observed experience of critical realism. In the second and third steps of the framework, we identify a finite set of similar repetitive patterns (routines) through computational analysis. We accomplish this by combining frequent subsequence mining and clustering analysis to transform empirical observation into a set of routines that correspond to actual happening in critical realism. Then, we employ a retroduction approach to identify generative mechanisms of the routines. In the final step, we validate the generative mechanisms by evaluating proposed processual explanations and/or eliminating alternatives. We provide an illustrative example of developing a process theory in relation to the collaboration pattern in Wikipedia.
Text
Accepted Manuscript - Theorizing Routines with Computational Sequence Analysis- A Critical Realism Framework
- Accepted Manuscript
More information
Accepted/In Press date: 3 June 2021
Published date: 3 March 2022
Additional Information:
Funding Information:
The authors thank the senior editor, the associate editor, and the anonymous reviewers, whose feedback helped us significantly improve the quality of this work. This study is supported by National Science Foundation (#0943010 and #1120966), and also by the Ministry of Education of the Republic of Korea and the National Research Foundation of Korea (NRF-2018S1A3A2075114 and NRF-2020S1A3A2A02093277). All remaining errors are the authors’ own
Publisher Copyright:
© 2022 by the Association for Information Systems.
Keywords:
Critical Realism, Digital Trace Data, Process Studies, Routines, Sequence Analytics
Identifiers
Local EPrints ID: 450154
URI: http://eprints.soton.ac.uk/id/eprint/450154
ISSN: 1536-9323
PURE UUID: abad9025-5d10-4f0f-a80d-3d9ff101683f
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Date deposited: 14 Jul 2021 16:30
Last modified: 16 Mar 2024 12:49
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Contributors
Author:
Zhewei Zhang
Author:
Habin Lee
Author:
Youngjin Yoo
Author:
Youngseok Choi
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