2023
DOI: 10.20473/jisebi.9.2.239-252
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The Use of Machine Learning to Detect Financial Transaction Fraud: Multiple Benford Law Model for Auditors

Doni Wiryadinata,
Aris Sugiharto,
Tarno Tarno

Abstract: Background: Fraud in financial transaction is at the root of corruption issues recorded in organization. Detecting fraud practices has become increasingly complex and challenging. As a result, auditors require precise analytical tools for fraud detection. Grouping financial transaction data using K-Means Clustering algorithm can enhance the efficiency of applying Benford Law for optimal fraud detection. Objective: This study aimed to introduce Multiple Benford Law Model for the analysis of data to show potenti… Show more

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Cited by 2 publications
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