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UEU » Journal » Manajemen Posted by [email protected] at 22/08/2021 18:35:21 • 389 Views
THE APPLICATION OF MACHINE LEARNING APPROACH TO ADDRESS THE GPV BIAS ON POS TRANSACTIONCreated by :
Mujiono Sadikin ( none ) Purwanto SK ; Luthfir Rahman Bagaskara
Subject: | PEGAWAI KINERJA PENILAIAN | Alt. Subject : | EMPLOYEE APPRAISAL ADDITIONAL SALARY | Keyword: | GAJI GPV |
Alt. Description
Each transaction always produces junk data or bias data either due to errors or intentions. The junk data
volume is always increase day by day, mainly in the using of public and free to use applications. Junk data
is a disruption in every decision making which can cause the material or immaterial losses. This kind of
problems are also occurring in the Qasir.id application, a POS application developed by PT. Solusi
Teknologi Niaga for MSME entrepreneurs in Indonesia. In the company case, the junk data of POS
transaction causes a poor quality of GPV (Gross Payment Value) information. The article presents the
results of study in the POS transaction junk data handling. The junk data handling is performed by to
validate three machine learning techniques and to deploy the best model in the company s Business
Intelligence (BI) system. Based on the result of qualitative and quantitative evaluations, it is shown that the
proposed approach provide a significant contribution to the company s decision-making process. The
evaluation applied to the operational data sample reveals the accuracy score in the handling of junk data is
0.96 in precision, 0.73 in recall value, and the f1 score is 0.831. Whereas the qualitative evaluation based on
users feed back of two-month operation indicates that users were greatly assisted in decision-making
regarding the GPV.
Date Create | : | 22/08/2021 | Type | : | Text | Format | : | pdf | Language | : | Indonesian | Identifier | : | UEU-Journal-11_1825 | Collection ID | : | 11_1825 |
Source : Journal of Theoretical and Applied Information Technology 31 July 2021. Vol.99. No 14
Relation Collection: Civitas Akademika Universitas Esa Unggul
Coverage : Fakultas Ekonomi dan Bisnis
Rights : @2021 Perpustakaan Universitas Esa Unggul
Publication URL : https://digilib.esaunggul.ac.id/the-application-of-machine-learning-approach-to-address-the-gpv-bias-on-pos-transaction-21233.html
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