Technology And Artificial Intelligence To Gain Insight Of Tax Data

Autor(s): Detty Purnamasari, Milda Safrila Oktiana, Ulfa Hidayati, Mario Mora Siregar, Fanka Arie Reza
DOI: 10.35760/ugefic.v8i1.149

Abstract

Technology is used in various fields to effective and efficient tasks. Artificial intelligence methods are also used to analyze data to gain insights. The knowledge is an output from the process using artificial intelligence that useful in policy-making and decision-making within an organization. Tax management organizations in a country possess large and complex datasets, the implementation of artificial intelligence is necassary. This article reviews the concept of artificial intelligence and the technologies that can be used to process tax data and gain the insights. Linear regression and clustering techniques, which are part of artificial intelligence, can be used to gain insights into tax data. Clustering techniques can be implemented on taxpayer data to assign labels/classes to taxpayers based on the amount of tax paid

Keywords

artificial intelligence; clustering, insight using ai; tax; taxpayer

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