Fraud Detection on Financial Statements Using Data Mining Techniques
Journal: Intelligent Systems and Applications in Engineering (IJISAE) (Vol.5, No. 3)Publication Date: 2017-09-30
Authors : Murat Sorkun; Taner Toraman;
Page : 132-134
Keywords : Data mining; fraud detection; financial statements; e-ledger; machine learning;
Abstract
This study explores the use of data mining methods to detect fraud for on e-ledgers through financial statements. For this purpose, data set were produced by rule-based control application using 72 sample e-ledger and error percentages were calculated and labeled. The financial statements created from the labeled e-ledgers were trained by different data mining methods on 9 distinguishing features. In the training process, Linear Regression, Artificial Neural Networks, K-Nearest Neighbor algorithm, Support Vector Machine, Decision Stump, M5P Tree, J48 Tree, Random Forest and Decision Table were used. The results obtained are compared and interpreted.
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Last modified: 2017-10-09 15:49:36