Implementation of the Decission Tree Algorithm to Determine Credit Worthiness

Abdussomad Abdussomad, Ilham Kurniawan, Agung Wibowo

Submitted : 2023-10-23, Published : 2023-11-30.

Abstract

Credit is a loan from a bank that needs to be repaid with interest. In practice, problematic credit or bad credit often occurs due to less thorough credit analysis in the credit granting process, or from bad customers. This research aims to predict creditworthiness using the Decision Tree Classification Algorithm and find a solution for determining it. This research uses the CRISP-DM (Cross-Industry Standard Process for Data Mining) method. This research method tests the effects of using the decision tree, Support Vector Machine, and Naïve Bayes model with the Decision Tree Classification Algorithm. The decision tree classification algorithm accurately analyzed problem loans and non-problem debtors at 93.49%. The decision tree algorithm test results are better than the support vector machine by 3.45%, and naïve bayes by 13.03%. The results of our study were also 4.16% better than the previous study. This research has also implemented the selected model in the form of website application deployment.

Keywords

Credit analysis, Decision tree models, Decision tree algorithms

References

J. Zhang, R. Tan, dan Y. dong Li, “Design of Personal Credit Information Sharing Platform Based on Consortium Blockchain,” Commun. Comput. Inf. Sci., vol. 1286, no. 2019, hal. 166–177, 2020.

R. A. Mancisidor, M. Kampffmeyer, K. Aas, dan R. Jenssen, “Knowledge-Based Systems Deep generative models for reject inference in credit scoring ✩,” Knowledge-Based Syst., vol. 196, hal. 105758, 2020.

D. Tripathi, R. Cheruku, dan A. Bablani, “Relative Performance Evaluation of Ensemble Classification with Feature Reduction in Credit Scoring Datasets,” Springer, vol. 705, no. January 2018, hal. 201–211, 2018.

D. Tripathi, D. R. Edla, V. Kuppili, dan A. Bablani, “Evolutionary Extreme Learning Machine with novel activation function for credit scoring,” Eng. Appl. Artif. Intell., vol. 96, no. February, hal. 103980, 2020.

X. Dastile, T. Celik, dan M. Potsane, “Statistical and machine learning models in credit scoring: A systematic literature survey,” Appl. Soft Comput. J., vol. 91, hal. 106263, 2020.

D. O. Cardoso et al., “Author ’ s Accepted Manuscript Financial credit analysis via a clustering weightless neural classifier,” Neurocomputing, 2015.

Z. A. Andriawan et al., “Prediction of Hotel Booking Cancellation using CRISP-DM,” ICICoS 2020 - Proceeding 4th Int. Conf. Informatics Comput. Sci., hal. 0–5, 2020.

C. Gonçalves, D. Ferreira, C. Neto, A. Abelha, dan J. Machado, “Prediction of mental illness associated with unemployment using data mining,” Procedia Comput. Sci., vol. 177, hal. 556–561, 2020.

F. Martinez-Plumed et al., “CRISP-DM Twenty Years Later: From Data Mining Processes to Data Science Trajectories,” IEEE Trans. Knowl. Data Eng., vol. 33, no. 8, hal. 3048–3061, 2021.

P. Darussalam Adhis, “Jurnal Ilmiah Wahana Pendidikan,” J. Ilm. Wahana Pendidik. https//jurnal.unibrah.ac.id/index.php/JIWP, vol. 7, no. 1, hal. 391–402, 2021.

S. Huber, H. Wiemer, D. Schneider, dan S. Ihlenfeldt, “DMME: Data mining methodology for engineering applications - A holistic extension to the CRISP-DM model,” Procedia CIRP, vol. 79, hal. 403–408, 2019.

T. T. Muryono, A. Taufik, dan I. Irwansyah, “Perbandingan Algoritma K-Nearest Neighbor, Decision Tree, Dan Naive Bayes Untuk Menentukan Kelayakan Pemberian Kredit,” Infotech J. Technol. Inf., vol. 7, no. 1, hal. 35–40, 2021.

Article Metrics

Abstract view: 93 times
Download     : 40   times Download     : 17   times

Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.

Refbacks

  • There are currently no refbacks.