The Application of Tree-based model to Unbalanced German Credit Data Analysis

With the development of financial consumption, demand for credit has soared. Since the bank has detailed client data, it is important to build effective models to distinguish between high-risk groups and low-risk groups. However, traditional credit evaluation methods including expert opinion, credit...

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Main Author: Chen Zhengye
Format: Article
Language:English
Published: EDP Sciences 2018-01-01
Series:MATEC Web of Conferences
Online Access:https://doi.org/10.1051/matecconf/201823201005
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spelling doaj-8eb5ac3d63124adba4964a4506331ef62021-02-02T01:49:23ZengEDP SciencesMATEC Web of Conferences2261-236X2018-01-012320100510.1051/matecconf/201823201005matecconf_eitce2018_01005The Application of Tree-based model to Unbalanced German Credit Data AnalysisChen Zhengye0Allendale Columbia SchoolWith the development of financial consumption, demand for credit has soared. Since the bank has detailed client data, it is important to build effective models to distinguish between high-risk groups and low-risk groups. However, traditional credit evaluation methods including expert opinion, credit rating and credit scoring are very subjective and inaccurate. Moreover, the data are highly unbalanced since the number of high-risk groups is significantly less than that of low-risk groups. Progress in machine learning makes it possible to conduct accurate credit analysis. The tree-based machine learning models are particularly suitable for the unbalanced credit data by weighting the credit individuals. We apply a series of tree-based machine learning models to analyze the German Credit Data from the UCI Repository of Machine Learning Databases.https://doi.org/10.1051/matecconf/201823201005
collection DOAJ
language English
format Article
sources DOAJ
author Chen Zhengye
spellingShingle Chen Zhengye
The Application of Tree-based model to Unbalanced German Credit Data Analysis
MATEC Web of Conferences
author_facet Chen Zhengye
author_sort Chen Zhengye
title The Application of Tree-based model to Unbalanced German Credit Data Analysis
title_short The Application of Tree-based model to Unbalanced German Credit Data Analysis
title_full The Application of Tree-based model to Unbalanced German Credit Data Analysis
title_fullStr The Application of Tree-based model to Unbalanced German Credit Data Analysis
title_full_unstemmed The Application of Tree-based model to Unbalanced German Credit Data Analysis
title_sort application of tree-based model to unbalanced german credit data analysis
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2018-01-01
description With the development of financial consumption, demand for credit has soared. Since the bank has detailed client data, it is important to build effective models to distinguish between high-risk groups and low-risk groups. However, traditional credit evaluation methods including expert opinion, credit rating and credit scoring are very subjective and inaccurate. Moreover, the data are highly unbalanced since the number of high-risk groups is significantly less than that of low-risk groups. Progress in machine learning makes it possible to conduct accurate credit analysis. The tree-based machine learning models are particularly suitable for the unbalanced credit data by weighting the credit individuals. We apply a series of tree-based machine learning models to analyze the German Credit Data from the UCI Repository of Machine Learning Databases.
url https://doi.org/10.1051/matecconf/201823201005
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