Detecting future financial statement fraud using a machine learning model in Indonesia: a comparative study
ISSN: 1321-7348
Article publication date: 28 September 2023
Issue publication date: 21 June 2024
Abstract
Purpose
This study aims to compare machine learning models, datasets and splitting training-testing using data mining methods to detect financial statement fraud.
Design/methodology/approach
This study uses a quantitative approach from secondary data on the financial reports of companies listed on the Indonesia Stock Exchange in the last ten years, from 2010 to 2019. Research variables use financial and non-financial variables. Indicators of financial statement fraud are determined based on notes or sanctions from regulators and financial statement restatements with special supervision.
Findings
The findings show that the Extremely Randomized Trees (ERT) model performs better than other machine learning models. The best original-sampling dataset compared to other dataset treatments. Training testing splitting 80:10 is the best compared to other training-testing splitting treatments. So the ERT model with an original-sampling dataset and 80:10 training-testing splitting are the most appropriate for detecting future financial statement fraud.
Practical implications
This study can be used by regulators, investors, stakeholders and financial crime experts to add insight into better methods of detecting financial statement fraud.
Originality/value
This study proposes a machine learning model that has not been discussed in previous studies and performs comparisons to obtain the best financial statement fraud detection results. Practitioners and academics can use findings for further research development.
Keywords
Acknowledgements
The author would like to thank the editor-in-chief, editor, co-editor, associate editors, anonymous reviewers and all staff of this journal who contributed to the publication of this article. The author would like to thank all the comments and suggestions from the editor-in-chief and anonymous reviewers so that this article was completed well.
Since acceptance of this article, the following author have updated their affiliations: Moh. Riskiyadi is at the Pamator Research Institute, Sumenep, Indonesia.
Citation
Riskiyadi, M. (2024), "Detecting future financial statement fraud using a machine learning model in Indonesia: a comparative study", Asian Review of Accounting, Vol. 32 No. 3, pp. 394-422. https://doi.org/10.1108/ARA-02-2023-0062
Publisher
:Emerald Publishing Limited
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