Introduces a new analytical review procedure that measures the degree to which a data set’s digit distribution deviates from a Benford digit distribution. This deviation can indicate potential manipulation and can be used to signal the need for further audit testing. An artificial neural network is used to distinguish between “normal” and “manipulated” financial data. The results show that if data have been contaminated (at a 10 per cent level or more) a Benford analytical review procedure will detect this 68 per cent of the time. If the data are not contaminated, the test will indicate that the data are “clean” 67 per cent of the time. Because analytical review procedures are not used in isolation, these results probably understate the effectiveness and potential of a digits‐based analytical review procedure. This procedure’s fraud detection results compare favorably to traditional analytical review procedures. Importantly, its unique analysis procedure allows it to complement traditional analytical review procedures. A key limitation of this study is that it uses simulated data, rather than actual data. Such an enhancement will be a critical step in future research. This method appears to have potential merit and provides many opportunities for new research.
Article navigation
1 August 1998
Research Article|
August 01 1998
Using Benford’s law and neural networks as a review procedure Available to Purchase
Bruce Busta;
Bruce Busta
Department of Accounting, College of Business, St. Cloud State University, Minnesota, USA
Search for other works by this author on:
Randy Weinberg
Randy Weinberg
Department of Business Computers and Information Systems, College of Business, St. Cloud State University, Minnesota, USA
Search for other works by this author on:
Publisher: Emerald Publishing
Online ISSN: 1758-7735
Print ISSN: 0268-6902
© MCB UP Limited
1998
Managerial Auditing Journal (1998) 13 (6): 356–366.
Citation
Busta B, Weinberg R (1998), "Using Benford’s law and neural networks as a review procedure". Managerial Auditing Journal, Vol. 13 No. 6 pp. 356–366, doi: https://doi.org/10.1108/02686909810222375
Download citation file:
Suggested Reading
A fraud investigation plan for a false accounting and theft case
Journal of Financial Crime (October,2019)
Robustness of the neural network based control chart pattern recognition system to non‐normality
International Journal of Quality & Reliability Management (February,2002)
Predicting market responses with a neural network:: the case of fast moving consumer goods
Marketing Intelligence & Planning (August,1995)
Neural network technology for knowledge resource management
Management Decision (March,1996)
Neural processing set to boost sensor technology
Sensor Review (September,1994)
Related Chapters
Physics-informed machine learning: Applications in smart transportation
Machine Learning in Civil Engineering and Infrastructure Development: A Practitioner's Handbook
Religious Social Identity and Whistle-Blowing
Research on Professional Responsibility and Ethics in Accounting
Emotional Reactions to Financial Statement Fraud
Research on Professional Responsibility and Ethics in Accounting
Recommended for you
These recommendations are informed by your reading behaviors and indicated interests.
