Evolvement of China-related topics in academic accounting research: machine learning evidence
Evolvement of China-related topics in academic accounting research: machine learning evidence
This study employs an unsupervised machine learning approach to explore the evolution of accounting research. We are particularly interested in exploring why international researchers and audiences are interested in China-related issues; what kinds of research topics related to China are mainly investigated in globally recognised journals; and what patterns and emerging topics can be explored by comprehensively analysing a big sample. Using a training sample of 23,220 articles from 46 accounting journals over the period 1980 to 2018, we first identify the optimal number of accounting research topics; the dynamic patterns of these accounting research topics are explored on the basis of 46 accounting journals to show changes in the focus of accounting research. Further, we collect articles related to Chinese accounting research from 18 accounting journals, eight finance journals, and eight management journals over the period 1980 to 2018. We objectively identify China-related accounting research topics and map them to the stages of China’s economic development. We attempt to identify the China-related issues global researchers are interested in and whether accounting research reflects the economic context. We use HistCite TM to generate a citation map along a timeline to illustrate the connections between topics. The citation clusters demonstrate “tribalism” phenomena in accounting research. The topics related to Chinese accounting research conducted by international accounting researchers reveal that accounting changes mirror economic reforms. Our findings indicate that accounting research is embedded in the economic context.
168-199
Cao, June
af0d62ff-d54c-412f-a152-cc04c63c7290
Gu, Zhanzhong
9bab6a03-526d-4739-bd27-a1b5a4d78ed5
Hasan, Iftekhar
d058617b-0732-45d2-a455-84d7719f2fbe
December 2020
Cao, June
af0d62ff-d54c-412f-a152-cc04c63c7290
Gu, Zhanzhong
9bab6a03-526d-4739-bd27-a1b5a4d78ed5
Hasan, Iftekhar
d058617b-0732-45d2-a455-84d7719f2fbe
Cao, June, Gu, Zhanzhong and Hasan, Iftekhar
(2020)
Evolvement of China-related topics in academic accounting research: machine learning evidence.
China Accounting and Finance Review, 22 (4), .
Abstract
This study employs an unsupervised machine learning approach to explore the evolution of accounting research. We are particularly interested in exploring why international researchers and audiences are interested in China-related issues; what kinds of research topics related to China are mainly investigated in globally recognised journals; and what patterns and emerging topics can be explored by comprehensively analysing a big sample. Using a training sample of 23,220 articles from 46 accounting journals over the period 1980 to 2018, we first identify the optimal number of accounting research topics; the dynamic patterns of these accounting research topics are explored on the basis of 46 accounting journals to show changes in the focus of accounting research. Further, we collect articles related to Chinese accounting research from 18 accounting journals, eight finance journals, and eight management journals over the period 1980 to 2018. We objectively identify China-related accounting research topics and map them to the stages of China’s economic development. We attempt to identify the China-related issues global researchers are interested in and whether accounting research reflects the economic context. We use HistCite TM to generate a citation map along a timeline to illustrate the connections between topics. The citation clusters demonstrate “tribalism” phenomena in accounting research. The topics related to Chinese accounting research conducted by international accounting researchers reveal that accounting changes mirror economic reforms. Our findings indicate that accounting research is embedded in the economic context.
Text
85988
- Version of Record
More information
Accepted/In Press date: 14 October 2020
Published date: December 2020
Identifiers
Local EPrints ID: 500772
URI: http://eprints.soton.ac.uk/id/eprint/500772
PURE UUID: eb578d73-f85f-4cd2-9902-3a2184136828
Catalogue record
Date deposited: 13 May 2025 16:35
Last modified: 22 Aug 2025 02:49
Export record
Contributors
Author:
June Cao
Author:
Zhanzhong Gu
Author:
Iftekhar Hasan
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics