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The KDD Process in Big Data Analytics: A Theoretical Approach to Taxpayer Non-Compliance Analysis Cover

The KDD Process in Big Data Analytics: A Theoretical Approach to Taxpayer Non-Compliance Analysis

By: Arnela Kaknjo and  Lejla Turulja  
Open Access
|Jul 2025

Abstract

In the modern business environment, big data analytics and data mining techniques are increasingly recognized as tools for improving fiscal discipline and more efficient management of public revenues. This paper explores the possibility of applying the knowledge discovery process from databases to detect patterns of financial behavior that may indicate tax non-compliance. A quantitative approach based on the analysis of secondary data from ten joint-stock companies from the Federation of Bosnia and Herzegovina, for which financial statements and tax debt data are available, was used.

The relationship between key financial indicators (EPS, financial stability ratio, total asset turnover ratio and debt ratio) and the amount of tax debt was examined using descriptive statistics and regression analysis. The results show that lower profitability and poorer financial stability significantly correlate with higher tax debt, while high operational efficiency and debt have a more complex and statistically marginal impact. The findings confirm the possibility of using publicly available financial data for early identification of risky taxpayers, which opens up space for further development of predictive models in the domain of tax analytics.

Language: English
Page range: 16 - 42
Submitted on: Jun 15, 2025
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Accepted on: Jun 30, 2025
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Published on: Jul 29, 2025
Published by: University of Sarajevo
In partnership with: Paradigm Publishing Services
Publication frequency: 2 issues per year

© 2025 Arnela Kaknjo, Lejla Turulja, published by University of Sarajevo
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.