Perbandingan Metode Klasifikasi Naive Bayes dan K-Nearest Neighbor pada Data Status Pembayaran Pajak Pertambahan Nilai di Kantor Pelayanan Pajak Pratama Samarinda Ulu
Date
2021-11Author
Rahmaulidyah, Fatihah Noor
Hayati, Memi Nor
Goejantoro, Rito
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Show full item recordAbstract
Classification is a systematic grouping of objects into certain groups based on the same characteristics. The
classification method used in this research are naive Bayes and K-Nearest Neighbor which has a relatively high
degree of accuracy. This research aims to compare the level of classification accuracy on the status data of
value-added tax (VAT) payment. The data used is data on corporate taxpayers at Samarinda Ulu Tax Office in
2018 with the status of VAT payment being compliant or non-compliant and used 3 independent variables are
income, type of business entity and tax reported status. Measurement of accuracy using APER in the Naive
Bayes method is 17.07% and in K-Nearest Neighbor method is 19,51%. The comparison results of accuracy
measurements between the two methods show that the naive Bayes method has a higher level of accuracy than
the K-Nearest Neighbor method.