In this thesis we investigate whether unsupervised and semisupervised machine learning methods can be applied to detect undiscovered erroneous tax returns, and how the properties of the underlying data affect method performance. To do this we test the two fully unsupervised clustering algorithms K-means and DBSCAN, as well as the two semisupervised approaches One-Class Support Vector Machines and autoencoders. We use a sample of real anonymous tax returns, and evaluate model performance in situations where erroneous returns constitutes a minor percentage of the dataset. Model performance suggest that our methods are not suited to serve as stand alone solutions for identifying faulty returns, with relatively low F1-scores between 0.1...
Bookkeeping data free of fraud and errors is a cornerstone of legitimate business operations. Highly...
Most of the existing research on enterprise tax arrears prediction is based on the financial situati...
Tax evasion detection plays a crucial role in addressing tax revenue loss. Many efforts have been ma...
In this thesis we investigate whether unsupervised and semisupervised machine learning methods can b...
Tax authorities around the world are increasingly employing data mining and machine learning algori...
The goal of the present research is to contribute to the detection of tax fraud concerning personal ...
Taxation is one of the most important sources of revenue for the European Union and Value Added Tax...
Artículo de publicación ISIIn this paper we give evidence that it is possible to characterize and de...
Corporate tax avoidance reduces government revenues which could limit country development plans. Thu...
Applications of machine learning (ML) and data science have extended significantly into contemporary...
This paper addresses the performances of machine learning classification models for the detection of...
AbstractIn order to solve the tax problem of mining industry of outlier data, analysis of the tax in...
Fraud and error are two underlying sources of misstated financial statements. Modern machine learnin...
[EN] Analysis and detection of fraud in the insurance sector has traditionally been carried out thro...
Background: Detecting anomalies in time-series data is a task that can be done with the help of data...
Bookkeeping data free of fraud and errors is a cornerstone of legitimate business operations. Highly...
Most of the existing research on enterprise tax arrears prediction is based on the financial situati...
Tax evasion detection plays a crucial role in addressing tax revenue loss. Many efforts have been ma...
In this thesis we investigate whether unsupervised and semisupervised machine learning methods can b...
Tax authorities around the world are increasingly employing data mining and machine learning algori...
The goal of the present research is to contribute to the detection of tax fraud concerning personal ...
Taxation is one of the most important sources of revenue for the European Union and Value Added Tax...
Artículo de publicación ISIIn this paper we give evidence that it is possible to characterize and de...
Corporate tax avoidance reduces government revenues which could limit country development plans. Thu...
Applications of machine learning (ML) and data science have extended significantly into contemporary...
This paper addresses the performances of machine learning classification models for the detection of...
AbstractIn order to solve the tax problem of mining industry of outlier data, analysis of the tax in...
Fraud and error are two underlying sources of misstated financial statements. Modern machine learnin...
[EN] Analysis and detection of fraud in the insurance sector has traditionally been carried out thro...
Background: Detecting anomalies in time-series data is a task that can be done with the help of data...
Bookkeeping data free of fraud and errors is a cornerstone of legitimate business operations. Highly...
Most of the existing research on enterprise tax arrears prediction is based on the financial situati...
Tax evasion detection plays a crucial role in addressing tax revenue loss. Many efforts have been ma...