A Study of Evaluating Housing Loan Credit Risk-Empirical Evidence from a Taichung City's Bank

碩士 === 南華大學 === 財務金融學系財務管理碩士班 === 105 ===   The housing loan customers in the period time of the Republic of China 95 years to 104 years of a selected L bank in Taichung city were the subjects for this study, by random sampling for the study 323 sample, of which 295 were normal housing loan customer...

Full description

Bibliographic Details
Main Authors: WU, SAN-PEI, 吳三培
Other Authors: LIAO, YONG-XI
Format: Others
Language:zh-TW
Published: 2017
Online Access:http://ndltd.ncl.edu.tw/handle/66vcum
id ndltd-TW-105NHU00304008
record_format oai_dc
spelling ndltd-TW-105NHU003040082019-05-15T23:17:36Z http://ndltd.ncl.edu.tw/handle/66vcum A Study of Evaluating Housing Loan Credit Risk-Empirical Evidence from a Taichung City's Bank 房屋貸款授信風險評估模式之研究-以台中市地區L銀行為例 WU, SAN-PEI 吳三培 碩士 南華大學 財務金融學系財務管理碩士班 105   The housing loan customers in the period time of the Republic of China 95 years to 104 years of a selected L bank in Taichung city were the subjects for this study, by random sampling for the study 323 sample, of which 295 were normal housing loan customers and 28 for the abnormal ones .The 17 variable through literature review, practical experience selected (age, gender, education level, marital status, job title, job, years of service, repayment, the guarantor, income, property located in the region, property type, loan purpose, whether two or more housing loans, whether guaranteed debt, credit card or cash card have cycle balance, checked by other Financial institution) are entered into the logistic regression model, and set LR1, then install 17 variables in the logistic regression to filter a significant variable, and set LR2(significant variable are: education level , job title, years of service, repayment, property located in the region, guaranteed debt, debt, credit card or cash card have cycle. and set LR2. )   LR1 and LR2 model are processed by The logistic regression, which totle classification accuracy rates were 94.43% and 93.19%, and LR1 model to predict the correct rate of normal mortgage customers about 99.66%, correct prediction rate of abnormal mortgage customers about 39.29%, LR1 nodel shows better prediction capability, select the LR1 is the best credit risk assessment model. LIAO, YONG-XI 廖永熙 2017 學位論文 ; thesis 59 zh-TW
collection NDLTD
language zh-TW
format Others
sources NDLTD
description 碩士 === 南華大學 === 財務金融學系財務管理碩士班 === 105 ===   The housing loan customers in the period time of the Republic of China 95 years to 104 years of a selected L bank in Taichung city were the subjects for this study, by random sampling for the study 323 sample, of which 295 were normal housing loan customers and 28 for the abnormal ones .The 17 variable through literature review, practical experience selected (age, gender, education level, marital status, job title, job, years of service, repayment, the guarantor, income, property located in the region, property type, loan purpose, whether two or more housing loans, whether guaranteed debt, credit card or cash card have cycle balance, checked by other Financial institution) are entered into the logistic regression model, and set LR1, then install 17 variables in the logistic regression to filter a significant variable, and set LR2(significant variable are: education level , job title, years of service, repayment, property located in the region, guaranteed debt, debt, credit card or cash card have cycle. and set LR2. )   LR1 and LR2 model are processed by The logistic regression, which totle classification accuracy rates were 94.43% and 93.19%, and LR1 model to predict the correct rate of normal mortgage customers about 99.66%, correct prediction rate of abnormal mortgage customers about 39.29%, LR1 nodel shows better prediction capability, select the LR1 is the best credit risk assessment model.
author2 LIAO, YONG-XI
author_facet LIAO, YONG-XI
WU, SAN-PEI
吳三培
author WU, SAN-PEI
吳三培
spellingShingle WU, SAN-PEI
吳三培
A Study of Evaluating Housing Loan Credit Risk-Empirical Evidence from a Taichung City's Bank
author_sort WU, SAN-PEI
title A Study of Evaluating Housing Loan Credit Risk-Empirical Evidence from a Taichung City's Bank
title_short A Study of Evaluating Housing Loan Credit Risk-Empirical Evidence from a Taichung City's Bank
title_full A Study of Evaluating Housing Loan Credit Risk-Empirical Evidence from a Taichung City's Bank
title_fullStr A Study of Evaluating Housing Loan Credit Risk-Empirical Evidence from a Taichung City's Bank
title_full_unstemmed A Study of Evaluating Housing Loan Credit Risk-Empirical Evidence from a Taichung City's Bank
title_sort study of evaluating housing loan credit risk-empirical evidence from a taichung city's bank
publishDate 2017
url http://ndltd.ncl.edu.tw/handle/66vcum
work_keys_str_mv AT wusanpei astudyofevaluatinghousingloancreditriskempiricalevidencefromataichungcitysbank
AT wúsānpéi astudyofevaluatinghousingloancreditriskempiricalevidencefromataichungcitysbank
AT wusanpei fángwūdàikuǎnshòuxìnfēngxiǎnpínggūmóshìzhīyánjiūyǐtáizhōngshìdeqūlyínxíngwèilì
AT wúsānpéi fángwūdàikuǎnshòuxìnfēngxiǎnpínggūmóshìzhīyánjiūyǐtáizhōngshìdeqūlyínxíngwèilì
AT wusanpei studyofevaluatinghousingloancreditriskempiricalevidencefromataichungcitysbank
AT wúsānpéi studyofevaluatinghousingloancreditriskempiricalevidencefromataichungcitysbank
_version_ 1719145125308792832