Credit Scoring Analysis: Case Study of Using Weka
Ključne reči:
data base, credit risk, data mining, knowledge discovery, granting creditsApstrakt
The goal of the paper is to present the overview of methodology of using credit scoring analysis with software Weka. German credit dataset was used in order to develop a decision tree with J.48 algorithm. We present characteristics of the dataset and the main results with the focus to the interpretation of Weka output. Paper could be useful for the users of Weka that aim to use it for credit scoring analysis.
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
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