Please use this identifier to cite or link to this item: https://hdl.handle.net/20.500.14279/3366
Title: Neural networks: the panacea in fraud detection?
Authors: Krambia-Kapardis, Maria 
Agathocleous, Michalis 
Christodoulou, Chris 
Major Field of Science: Social Sciences
Field Category: Economics and Business
Keywords: Auditors;Fraud;Neural networks
Issue Date: 27-Jul-2010
Source: Managerial Auditing Journal, 2010, vol. 25, no. 7, pp. 659-678
Volume: 25
Issue: 7
Start page: 659
End page: 678
Journal: Managerial Auditing Journal 
Abstract: Purpose: The purpose of the paper is to test the use of artificial neural networks (ANNs) as a tool in fraud detection. Design/methodology/approach: Following a review of the relevant literature on fraud detection by auditors, the authors developed a questionnaire which they distributed to auditors attending a fraud detection seminar. The questionnaire was then used to develop seven ANNs to test the usage of these models in fraud detection. Findings: Utilizing exogenous and endogenous factors as input variables to ANNs and in developing seven different models, an average of 90 per cent accuracy was found in the fraud detection prediction model. It has, therefore, been demonstrated that ANNs can be used by auditors to identify fraud-prone companies. Originality/value: Whilst previous researchers have looked at empirical predictors of fraud, fraud risk assessment methods and mechanically fraud risk assessment methods, no other research has combined both exogenous and endogenous factors in developing ANNs to be used in fraud detection. Thus, auditors can use ANNs as complementary to other techniques at the planning stage of their audit to predict if a particular audit client is likely to have been victimized by a fraudster.
URI: https://hdl.handle.net/20.500.14279/3366
ISSN: 17587735
DOI: 10.1108/02686901011061342
Rights: © Emerald
Type: Article
Affiliation : Cyprus University of Technology 
University of Cyprus 
Publication Type: Peer Reviewed
Appears in Collections:Άρθρα/Articles

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