Exploring accounting research topic evolution: an unsupervised machine learning approach
Exploring accounting research topic evolution: an unsupervised machine learning approach
This study explores the evolution of accounting research by utilizing an unsupervised machine learning approach. We aim to identify the latent topics of accounting from the 1980s up to 2018, the dynamics and emerging topics of accounting research, and the economic reasons behind those changes. First, based on 23,220 articles from 46 accounting journals, we identify 55 topics using the latent Dirichlet allocation model. To illustrate the connection between topics, we use HistCite to generate a citation map along a timeline. The citation clusters demonstrate the “tribalism” phenomenon in accounting research. We then implement the dynamic topic model to reveal the dynamics of topics to show changes in accounting research. The emerging research trends are identified from the topic analytics. We further explore the economic reasons and in-depth insights into the topic evolution, indicating the economic development embeddedness nature of accounting research.
Cao, June
af0d62ff-d54c-412f-a152-cc04c63c7290
Gu, Zhanzhong
44c02d3b-b7ec-4f7a-99c7-15d14484db28
Hasan, Iftekhar
613730d7-c97e-44d2-aa26-875e9e7629c0
1 October 2023
Cao, June
af0d62ff-d54c-412f-a152-cc04c63c7290
Gu, Zhanzhong
44c02d3b-b7ec-4f7a-99c7-15d14484db28
Hasan, Iftekhar
613730d7-c97e-44d2-aa26-875e9e7629c0
Cao, June, Gu, Zhanzhong and Hasan, Iftekhar
(2023)
Exploring accounting research topic evolution: an unsupervised machine learning approach.
Journal of International Accounting Research, 22 (3).
(doi:10.2308/JIAR-2021-073).
Abstract
This study explores the evolution of accounting research by utilizing an unsupervised machine learning approach. We aim to identify the latent topics of accounting from the 1980s up to 2018, the dynamics and emerging topics of accounting research, and the economic reasons behind those changes. First, based on 23,220 articles from 46 accounting journals, we identify 55 topics using the latent Dirichlet allocation model. To illustrate the connection between topics, we use HistCite to generate a citation map along a timeline. The citation clusters demonstrate the “tribalism” phenomenon in accounting research. We then implement the dynamic topic model to reveal the dynamics of topics to show changes in accounting research. The emerging research trends are identified from the topic analytics. We further explore the economic reasons and in-depth insights into the topic evolution, indicating the economic development embeddedness nature of accounting research.
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13 Exploring Accounting Research Topic Evolution-An Unsupervised Machine Learning Approach
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Accepted/In Press date: 23 July 2023
Published date: 1 October 2023
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Local EPrints ID: 501340
URI: http://eprints.soton.ac.uk/id/eprint/501340
PURE UUID: 8f41baa7-fc73-447b-b263-a4be6c2a314d
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Date deposited: 29 May 2025 16:47
Last modified: 31 May 2025 02:19
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Author:
June Cao
Author:
Zhanzhong Gu
Author:
Iftekhar Hasan
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