2023
DOI: 10.32604/csse.2023.033375
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A Multi-Module Machine Learning Approach to Detect Tax Fraud

Abstract: Tax fraud is one of the substantial issues affecting governments around the world. It is defined as the intentional alteration of information provided on a tax return to reduce someone's tax liability. This is done by either reducing sales or increasing purchases. According to recent studies, governments lose over $500 billion annually due to tax fraud. A loss of this magnitude motivates tax authorities worldwide to implement efficient fraud detection strategies. Most of the work done in tax fraud using machin… Show more

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Cited by 4 publications
(2 citation statements)
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References 18 publications
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“…An anomaly detection model can be used to detect a fraudulent transaction or any highly imbalanced supervised tasks (Chandola et al 2009). AEs can be used in supervised (Alsadhan 2023), unsupervised (Lopes et al 2022), and semi-supervised (Akcay et al 2018;Ruff et al 2019) anomaly detection tasks.…”
Section: Anomaly Detectionmentioning
confidence: 99%
See 1 more Smart Citation
“…An anomaly detection model can be used to detect a fraudulent transaction or any highly imbalanced supervised tasks (Chandola et al 2009). AEs can be used in supervised (Alsadhan 2023), unsupervised (Lopes et al 2022), and semi-supervised (Akcay et al 2018;Ruff et al 2019) anomaly detection tasks.…”
Section: Anomaly Detectionmentioning
confidence: 99%
“…If the reconstruction error is above the threshold, the input data is classified as anomalous . This approach combines the feature learning capabilities of AEs with the discriminative power of supervised classifiers, enhancing the accuracy of anomaly detection in real-world applications, including fraud detection (Alsadhan 2023;Debener et al 2023;Fanai and Abbasimehr 2023), network security (Ghorbani and Fakhrahmad 2022;Lopes et al 2022), and fault detection Ying et al 2023) in industrial processes.…”
Section: Anomaly Detectionmentioning
confidence: 99%