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Detection of Accounting Anomalies in the Latent Space using Adversarial Autoencoder Neural Networks
Type
conference paper
Date Issued
2019-08-05
Author(s)
Research Team
AIML Lab
Abstract
The detection of fraud in accounting data is a long-standing challenge in financial statement audits. Nowadays, the majority of applied techniques refer to handcrafted rules derived from known fraud scenarios. While fairly successful, these rules exhibit the drawback that they often fail to generalize beyond known fraud scenarios and fraudsters gradually find ways to circumvent them. In contrast, more advanced approaches inspired by the recent success of deep learning often lack seamless interpretability of the detected results. To overcome this challenge, we propose the application of adversarial autoencoder networks. We demonstrate that such artificial neural networks are capable of learning a semantic meaningful representation of real-world journal entries. The learned representation provides a holistic view on a given set of journal entries and significantly improves the interpretability of detected accounting anomalies. We show that such a representation combined with the networks reconstruction error can be utilized as an unsupervised and highly adaptive anomaly assessment. Experiments on two datasets and initial feedback received by forensic accountants underpinned the effectiveness of the approach.
Language
English
Keywords
deep learning
accounting
artificial intelligence
machine learning
HSG Classification
contribution to scientific community
Event Title
2nd KDD Workshop on Anomaly Detection in Finance, 2019
Event Location
Anchorage, Alaska, USA
Event Date
August 05, 2019
Official URL
Subject(s)
Division(s)
Contact Email Address
Marco.Schreyer@unisg.ch
Additional Information
Code available at: https://github.com/GitiHubi/deepAD
Eprints ID
257633
File(s)
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open access
Name
KDD_2019_ADF_final.pdf
Size
4.99 MB
Format
Adobe PDF
Checksum (MD5)
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