2019
DOI: 10.3390/fi11040086
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Tax Fraud Detection through Neural Networks: An Application Using a Sample of Personal Income Taxpayers

Abstract: The goal of the present research is to contribute to the detection of tax fraud concerning personal income tax returns (IRPF, in Spanish) filed in Spain, through the use of Machine Learning advanced predictive tools, by applying Multilayer Perceptron neural network (MLP) models. The possibilities springing from these techniques have been applied to a broad range of personal income return data supplied by the Institute of Fiscal Studies (IEF). The use of the neural networks enabled taxpayer segmentation as well… Show more

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Cited by 35 publications
(12 citation statements)
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“…More recently, the use of ML has been proposed and explored for the analysis and mining of public policy-related information, as part of evidence-based policy approaches (Androutsopoulou and Charalabidis, 2018). Specifically, ML techniques for public policy-related applications have been explored in areas like taxation (López et al, 2019), public security and counterterrorism (Huamaní et al, 2020), public work design (Eggers et al, 2017), and healthcare (Qian and Medaglia, 2019). These systems have provided insights on the benefits and challenges of ML-based policymaking.…”
Section: Related Workmentioning
confidence: 99%
“…More recently, the use of ML has been proposed and explored for the analysis and mining of public policy-related information, as part of evidence-based policy approaches (Androutsopoulou and Charalabidis, 2018). Specifically, ML techniques for public policy-related applications have been explored in areas like taxation (López et al, 2019), public security and counterterrorism (Huamaní et al, 2020), public work design (Eggers et al, 2017), and healthcare (Qian and Medaglia, 2019). These systems have provided insights on the benefits and challenges of ML-based policymaking.…”
Section: Related Workmentioning
confidence: 99%
“…In [29], the researchers introduced a multilayer perceptron neural network model to detect fraud in personal income tax forms. The reported findings show that the multilayer perceptron can be considered as an efficient classifier to predict fraudulent taxpayers, and estimate the taxpayer's likelihood of cheating tax.…”
Section: Related Workmentioning
confidence: 99%
“…The potential of machine learning in the public sphere is grounded in the tremendous data availability and policy prediction needs of this field. Machine learning has already demonstrated considerable potential to enhance the effectiveness and accuracy of many decisions-making scenarios ranging from medical diagnosis, granting mortgages, tax evasion, and terrorist activities identification (Kononenko, 2001;Nowshath et al, 2019;Rodríguez et al, 2019;Mantari et al, 2020). Machine Learning is an umbrella term encompassing a wide range of algorithms for fields such as natural language processing, data mining, image processing, and predictive analytics.…”
Section: Why the Use Of Machine Learning In Public Policy?mentioning
confidence: 99%