Article (Scientific journals)
Exploring explainable AI in the tax domain
Górski, Łukasz; Kuzniacki, Blazej; LASMAR ALMADA, Marco Antonio et al.
2024In Artificial Intelligence and Law
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Keywords :
Artificial intelligence; Tax fraud; Explanation methods; Legal requirements; Duty to give reasons
Abstract :
[en] This paper analyses whether current explainable AI (XAI) techniques can help to address taxpayer concerns about the use of AI in taxation. As tax authorities around the world increase their use of AI-based techniques, taxpayers are increasingly at a loss about whether and how the ensuing decisions follow the procedures required by law and respect their substantive rights. The use of XAI has been proposed as a response to this issue, but it is still an open question whether current XAI techniques are enough to meet existing legal requirements. The paper approaches this question in the context of a case study: a prototype tax fraud detector trained on an anonymized dataset of real-world cases handled by the Buenos Aires (Argentina) tax authority. The decisions produced by this detector are explained through the use
[en] of various classification methods, and the outputs of these explanation models are evaluated on their explanatory power and on their compliance with the legal obligation that tax authorities provide the rationale behind their decision-making. We conclude the paper by suggesting technical and legal approaches for designing explanation mechanisms that meet the needs of legal explanation in the tax domain.
Disciplines :
Tax law
Law, criminology & political science: Multidisciplinary, general & others
Computer science
Author, co-author :
Górski, Łukasz
Kuzniacki, Blazej
LASMAR ALMADA, Marco Antonio  ;  University of Luxembourg > Faculty of Law, Economics and Finance (FDEF) > Department of Law (DL)
Tyliński, Kamil
Calvo, Madalena
Asnaghi, Pablo Matias
Almada, Luciano
Iñiguez, Hilario
Rubianes, Fernando
Pera, Octavio
Nigrelli, Juan Ignacio
External co-authors :
yes
Language :
English
Title :
Exploring explainable AI in the tax domain
Publication date :
2024
Journal title :
Artificial Intelligence and Law
ISSN :
0924-8463
eISSN :
1572-8382
Pages :
forthcoming
Peer reviewed :
Peer Reviewed verified by ORBi
Focus Area :
Law / European Law
Development Goals :
16. Peace, justice and strong institutions
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