Improving Creditworthiness Prediction Using Preprocessing Stages and Feature Selection

Ahmadani, Akbar Affaruk Khuzaimi and Suakanto, Sinung and Fakhrurroja, Hanif and Hardiyanti, Margareta (2023) Improving Creditworthiness Prediction Using Preprocessing Stages and Feature Selection. In: The 3rd International Conference on Electronic and Electrical Engineering and Intelligent System (ICE3IS 2023), 9-10 Agustus 2023, Yogyakarta, Indonesia.

[thumbnail of Improving_Creditworthiness_Prediction_Using_Preprocessing_Stages_and_Feature_Selection.pdf] Text
Improving_Creditworthiness_Prediction_Using_Preprocessing_Stages_and_Feature_Selection.pdf - Published Version
Restricted to Registered users only

Download (338kB) | Request a copy

Abstract

The purpose of this research is to improve the credit worthiness prediction model by applying preprocessing and feature selection stages. At the preprocessing stage, missing value data is removed and standardized with a z-score while the Information Gain and Gini Index are used as feature selection methods. This study uses a credit score classification dataset consisting of 19 features, 7 meta data, and 1 target data. Data were tested with and without preprocessing stages, as well as using feature selection using the Information Gain and Gini Index methods. Model evaluation employed AUC, Accuracy, and F1-Score metrics. The results demonstrate a significant improvement in Accuracy and F1-Score with the inclusion of preprocessing and feature selection stages, particularly for the Random Forest (RF) and Decision Tree (DT) algorithms. RF exhibited the highest accuracy of 97.1 %, indicating superior performance. Additionally, the AdaBoost (AB) and Gradient Boosting (GB) algorithms consistently demonstrate good performance, while the Neural Network (NN) algorithm shows substantial improvement when incorporating preprocessing and feature selection stages.

Item Type: Conference or Workshop Item (Paper)
Additional Information: Library Dosen
Uncontrolled Keywords: Prediction, Preprocessing, Feature Selection, Creditworthiness, Credit Scoring, Information Gain, Gini Index
Subjects: T Technology > TK Electrical engineering. Electronics Nuclear engineering
Divisions: Faculty of Engineering > Electrical and Information Technology Department
Depositing User: Rita Yulianti Yulianti
Date Deposited: 15 Aug 2024 01:20
Last Modified: 15 Aug 2024 01:20
URI: https://ir.lib.ugm.ac.id/id/eprint/92

Actions (login required)

View Item
View Item