Financial Accounting Fraud Detection Using Business Intelligence

The paper investigates the inherent problems of financial fraud detection and proposes a forensic accounting framework using business intelligence as a plausible means of addressing them. The paper adopts an empirical case study approach to present how business intelligence could be used effectively in the detection of financial accounting fraud. The proposed forensic accounting framework using business intelligence (BI) provides a three-phase model via novel knowledge discovery technique to perform the financial analysis such as ratio analysis for a business case scenario. The implementation of the framework practically demonstrates by using their accounting data how the technologies and the investigative methods of trend analysis could be adopted in order to investigate fraudulent financial reporting unlike traditional methods of vertical and horizontal analysis for the business case study. Finally, the results justify the effectiveness of the proposed BI model in proactively identifying, classifying and evaluating financial fraud in the organisation. This research further leads to practical follow-up steps that would serve as guidelines for the forensic accounting auditors and management to focus on the prime areas of financial fraud present in the case study. Overall, the proposed model caters to detecting various types of accounting fraud as well as aids in continuous improvement of an organisation?s accounting, audit, systems and policies through the feedback loop.

[1]  Shiguo Wang,et al.  A Comprehensive Survey of Data Mining-Based Accounting-Fraud Detection Research , 2010, 2010 International Conference on Intelligent Computation Technology and Automation.

[2]  Amrizah Kamaluddin,et al.  Accountability in Financial Reporting: Detecting Fraudulent Firms , 2014 .

[3]  George R. S. Weir,et al.  Triage in forensic accounting using Zipf's law , 2012 .

[4]  Chao-Hsien Chu,et al.  A Review of Data Mining-Based Financial Fraud Detection Research , 2007, 2007 International Conference on Wireless Communications, Networking and Mobile Computing.

[5]  H. Grove,et al.  Fraudulent Financial Reporting Detection: Key Ratios Plus Corporate Governance Factors , 2008 .

[6]  Kenneth O. Cogger,et al.  Neural network detection of management fraud using published financial data , 1998, Intell. Syst. Account. Finance Manag..

[7]  Gaurav Kapoor,et al.  Detecting evolutionary financial statement fraud , 2011, Decis. Support Syst..

[8]  Graham J. Williams,et al.  On-Line Unsupervised Outlier Detection Using Finite Mixtures with Discounting Learning Algorithms , 2000, KDD '00.

[9]  Sitalakshmi Venkatraman,et al.  Detecting malicious behaviour using supervised learning algorithms of the function calls , 2013, Int. J. Electron. Secur. Digit. Forensics.

[10]  Obeua S. Persons Using Financial Statement Data To Identify Factors Associated With Fraudulent Financial Reporting , 2011 .

[11]  Financial ratios between fraudulent and non-fraudulent firms: Evidence from Tehran Stock Exchange , 2015 .

[12]  Mark I. Hwang,et al.  A fuzzy neural network for assessing the risk of fraudulent financial reporting , 2003 .

[13]  Mark J. Nigrini Digital Analysis Using Benford's Law: Tests and Statistics for Auditors , 2001 .

[14]  Johan L. Perols Financial Statement Fraud Detection: An Analysis of Statistical and Machine Learning Algorithms , 2011 .

[15]  Michael Halperin,et al.  Content Analysis for Detection of Reporting Irregularities: Evidence from Restatements during the SOX-Era , 2014 .

[16]  C. Zopounidis,et al.  Detecting falsified financial statements: a comparative study using multicriteria analysis and multivariate statistical techniques , 2002 .

[17]  Yong Hu,et al.  The application of data mining techniques in financial fraud detection: A classification framework and an academic review of literature , 2011, Decis. Support Syst..

[18]  Chris Christodoulou,et al.  Neural networks: the panacea in fraud detection? , 2010 .

[19]  Ran Li Detection of Financial Reporting Fraud Based on Clustering Algorithm of Automatic Gained Parameter K Value , 2015 .

[20]  Sotiris Kotsiantis,et al.  Forecasting Fraudulent Financial Statements using Data Mining , 2007 .

[21]  Cindy Durtschi,et al.  The effective use of Benford's Law to assist in detecting fraud in accounting data , 2004 .

[22]  Charalambos Spathis Detecting false financial statements using published data: some evidence from Greece , 2002 .

[23]  F. Liou Fraudulent financial reporting detection and business failure prediction models: a comparison , 2008 .

[24]  Sushama Yadav,et al.  Forensic accounting: A new dynamic approach to investigate fraud cases , 2013 .

[25]  R. Brody,et al.  Accountants' perceptions regarding fraud detection and prevention methods , 2006 .

[26]  Pedro R. Falcone Sampaio,et al.  A survey of signature based methods for financial fraud detection , 2009, Comput. Secur..

[27]  Vadlamani Ravi,et al.  Detection of financial statement fraud and feature selection using data mining techniques , 2011, Decis. Support Syst..

[28]  Wei Chai,et al.  Fuzzy Ranking of Financial Statements for Fraud Detection , 2006, 2006 IEEE International Conference on Fuzzy Systems.

[29]  Joseph V. Carcello,et al.  A Decision Aid for Assessing the Likelihood of Fraudulent Financial Reporting , 2000 .

[30]  Kathleen A. Kaminski,et al.  Can financial ratios detect fraudulent financial reporting , 2004 .