The Robotisation of Tax Administration

In A. Grau (ed), Interactive Robotics: Legal, Ethical, Social and Economic Aspects (Springer Nature, 2022), Ch 20, 115-123

5 Pages Posted: 28 Mar 2022 Last revised: 4 Jan 2023

Date Written: March 4, 2022

Abstract

Developments over the last decade in the use of AI in tax administration have been nothing short of outstanding. Not only are taxpayers increasingly making use of automated systems in tax compliance, but perhaps more importantly, tax enforcement is increasingly reliant on new technologies as compliance-enhancing and fraud-prevention tools. However, whilst the use of AI brings very significant advantages to both the efficiency and the equity of tax systems, it also carries important risks. This paper identifies the development of a new AI fallacy within the tax policy sphere, namely that of unconstrained success: that the use of AI in tax compliance and enforcement can compensate for the deficiencies of the tax law. This paper considers the rationale behind the development of this fallacy, in particular the political and institutional dynamics involved in the approval of new tax legislation. It concludes that, maximising the benefits of the use of AI in tax compliance and enforcement requires departure from this fallacy, and the recognition of the wider dynamics of the tax policy-administration symbiosis.

Keywords: Taxation, tax administration, robotics, AI

Suggested Citation

de la Feria, Rita and Grau Ruiz, Maria Amparo, The Robotisation of Tax Administration (March 4, 2022). In A. Grau (ed), Interactive Robotics: Legal, Ethical, Social and Economic Aspects (Springer Nature, 2022), Ch 20, 115-123, Available at SSRN: https://ssrn.com/abstract=4045621

Rita De la Feria (Contact Author)

University of Leeds ( email )

School of Law
Liberty Building
Leeds, LS2 9JT
United Kingdom

Maria Amparo Grau Ruiz

Independent ( email )

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