Data Mining Journal Entries for Fraud Detection: An Exploratory Study

Fraud detection has become a critical component of financial audits and audit standards have heightened emphasis…

A Business Process Mining Application for Internal Transaction Fraud Mitigation

Internal fraud has received a great deal of attention from interested parties like governments or non-profit…

Auditing Journal Entries Using Extreme Value Theory

The area of journal entries is deemed to pose a high risk of material misstatements to…

Visual Exploration of Journal Entries to Detect Accounting Irregularities and Fraud

Fraud investigators have recently recognized the importance of data visualization for fraud detection. Data visualization is…

Detection of Anomalies in Large-Scale Accounting Data using Deep Autoencoder Networks

Deep autoencoder neural networks can be used to detect anomalous journal entries. Experiments on two real-world…

Detection of Accounting Anomalies in the Latent Space using Adversarial Autoencoder Neural Networks

The Association of Certified Fraud Examiners estimates in its “GlobalStudy on Occupational Fraud and Abuse 2018”…

Adversarial Learning of Deep fakes in Accounting

Machine learning techniques, and in particular deep neural networks, created advances across a diverse range of…

Utilizing Machine Learning Techniques to Reveal VAT Compliance Violations in Accounting Data

Research has shown that little attention is being paid to Value Added Tax (VAT) issues. There…

Accounting Journal Reconstruction with Variational Autoencoders and Long Short-term Memory Architecture

Deep learning is used to learn machines how to reconstruct journal entries. We developed basic models…

A Semi-Supervised Machine Learning Approach to Detect Anomalies in Big Accounting Data

Anomaly detection in large scale accounting data is one of the long-standing challenges in the financial…