Journal of Islamic Contemporary Accounting and Business
Vol. 3 No. 1 (2025): JICAB

Financing-Limit Prediction Classifier in Islamic Bank Using Tree-Based Algorithms

Mustafa, Mutya Qurratu'ayuni (Unknown)
Latief, Muhammad Riza Iqbal (Unknown)
Febriani, Dewi (Unknown)



Article Info

Publish Date
12 Mar 2025

Abstract

Islamic banks are one of the financial institutions that has been proven to be the catalyst to end extreme poverty in the world. However, amid the massive development of Industry 5.0, research about technology adaptation in Islamic banks is still considered rare. The aim of this study is to develop a technology that will help Islamic banks in making their financing decision more efficient. By using the current outstanding financing data in an Islamic bank, this study proposes a machine learning algorithm that could predict a financing limit based on customer classification. The tree-based learning algorithms used to build the algorithm have shown impressive results. The results show that the basic algorithm which is the Decision Tree gives 86% prediction accuracy. The algorithm is then improved by using the Random Forest algorithm. The Random Forest algorithm gives 91% prediction accuracy which significantly improves the base learning algorithm. Future research in this area is needed as the need to implement sophisticated technology is prominent in making Islamic banking more accessible across the globe.

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Journal Info

Abbrev

jicab

Publisher

Subject

Economics, Econometrics & Finance

Description

The Journal of Islamic Contemporary Accounting and Business is published by the Sharia Accounting program at the Institut Agama Islam Tazkia. To ensure the quality of the papers published, the journal employs a double-blind review process, where the identities of both the authors and reviewers are ...