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Learning Bayesian Network Classifiers for Credit ScoringLearning Bayesian Network Classifiers for Credit Scoring

Other Titles
Learning Bayesian Network Classifiers for Credit Scoring
Authors
안성진
Issue Date
2008
Publisher
한국자료분석학회
Keywords
Credit Scoring; Classification; Bayesian Network
Citation
Journal of The Korean Data Analysis Society, v.10, no.6, pp 3017 - 3032
Pages
16
Indexed
KCI
Journal Title
Journal of The Korean Data Analysis Society
Volume
10
Number
6
Start Page
3017
End Page
3032
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/27731
ISSN
1229-2354
2733-9173
Abstract
In this paper, we will evaluate the power and usefulness of Bayesian network classifiers for financial credit scoring. Various types of Bayesian network classifiers will be evaluated and contrasted including unrestricted Bayesian network classifiers learnt using a global score metric. For comparison, two of statistical classifiers will be evaluated. The experiments will be carried out on three real life credit scoring data sets. It will be shown that general Bayesian network classifiers learned by a global score search have a good performance and by using the Markov blanket concept, a natural form of input selection is obtained, which results in parsimonious and powerful models for financial credit scoring.
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자연과학대학 > Dept. of Information and Statistics > Journal Articles

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