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Erschienen in: Artificial Intelligence and Law 3/2023

20.07.2022 | Original Research

The potential of an artificial intelligence (AI) application for the tax administration system’s modernization: the case of Indonesia

verfasst von: Arfah Habib Saragih, Qaumy Reyhani, Milla Sepliana Setyowati, Adang Hendrawan

Erschienen in: Artificial Intelligence and Law | Ausgabe 3/2023

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Abstract

From 2010 to 2020, Indonesia’s tax-to-gross domestic product (GDP) ratio has been declining. A tax-to-GDP ratio trend of this magnitude indicates that the tax authority lacks the capacity to collect taxes. The tax administration system’s modernization utilizing information technology is thus deemed necessary. Artificial intelligence (AI) technology may serve as a solution to this issue. Using the theoretical frameworks of innovations in tax compliance, the cost of taxation, success factors for information technology governance (SFITG), and AI readiness, this study aims to analyze the costs and benefits, the enablers and inhibitors, and the readiness of the government and related parties to apply AI to modernize the tax administration system in Indonesia. This study used qualitative approaches for the data’s collection and analysis. The data were obtained through a literature study and in-depth interviews. The findings show that AI application in the field of taxation can assist tax authorities in enforcing the law, provide taxpayers with convenience in fulfilling their tax obligations, improve justice for all taxpayers, and reduce tax compliance costs. The openness of Indonesia to technological developments, as evidenced by the AI National Strategy, is a supporting factor in the application of AI in Indonesia, particularly for the modernization of the tax administration system. The absence of specific regulations governing AI adoption, as well as a lack of human resources that can help the tax administration process, data, and infrastructure already support, are the impediments to implementing AI for the modernization of the tax administration system in Indonesia.

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Metadaten
Titel
The potential of an artificial intelligence (AI) application for the tax administration system’s modernization: the case of Indonesia
verfasst von
Arfah Habib Saragih
Qaumy Reyhani
Milla Sepliana Setyowati
Adang Hendrawan
Publikationsdatum
20.07.2022
Verlag
Springer Netherlands
Erschienen in
Artificial Intelligence and Law / Ausgabe 3/2023
Print ISSN: 0924-8463
Elektronische ISSN: 1572-8382
DOI
https://doi.org/10.1007/s10506-022-09321-y

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