應用資料採礦技術建置台灣中小企業之電子業信用評等模型
碩士 === 國立政治大學 === 統計研究所 === 97 === Globalization trend is still growing. Because of the objective of connecting to the world, the banking and finance industry in Taiwan has implemented the New Basel Capital Accord since 2006, hoping to make use of globally consistent banking management method and sy...
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ndltd-TW-097NCCU53370332016-05-04T04:17:10Z http://ndltd.ncl.edu.tw/handle/58433574895298848218 應用資料採礦技術建置台灣中小企業之電子業信用評等模型 陳冠宇 碩士 國立政治大學 統計研究所 97 Globalization trend is still growing. Because of the objective of connecting to the world, the banking and finance industry in Taiwan has implemented the New Basel Capital Accord since 2006, hoping to make use of globally consistent banking management method and system to implement its spirit in this changing financial environment today. After the implementation of the New Basel Capital Accord, the principal development part in Taiwan industry, medium- and small-sized enterprises, is the first to be affected. For example, with regard to the capital requirements in credit risks, the constitution of medium- and small-sized enterprises is not as sound as large-sized enterprises’, and the financial transparency of medium- and small-sized enterprises is insufficient that the credit risk of financial institution would be lifted comparatively; and then, the finance and credit investigation of medium- and small-sized enterprises would become strict and conservative, thus the finance difficulty and cost of medium- and small-sized enterprises would be increased substantially. In view of this, this study regards the electronics industry from medium- and small-sized enterprises as the main study objects, and data mining procedures are used so as to establish the credit scoring system. To get the best probability model of default, different oversampling ratios are used one by one to match such statistical models and logistic regression, Neural Network Analysis, and C&R Tree; and logistic regression model is selected for the establishment of credit scoring system after assessment. Moreover, relevant the New Basel Capital Accord standards are followed to carry out every test and verification so as to confirm that the establishments of model and credit scoring system are appropriate. The result indicates that the model has good performance in out-sample test, while credit scoring system also passes such verification standards as accuracy analysis, level segment homogeneity test, and stability analysis. Hopefully, this study result can provide a set of effective and simple credit management system for the financial institution to establish information symmetrical channel with the medium- and small-sized enterprises, so that both parties can obtain mutual balance and the crisis can be alerted in advance. 鄭宇庭 蔡紋琦 2009 學位論文 ; thesis 89 zh-TW |
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碩士 === 國立政治大學 === 統計研究所 === 97 === Globalization trend is still growing. Because of the objective of connecting to the world, the banking and finance industry in Taiwan has implemented the New Basel Capital Accord since 2006, hoping to make use of globally consistent banking management method and system to implement its spirit in this changing financial environment today. After the implementation of the New Basel Capital Accord, the principal development part in Taiwan industry, medium- and small-sized enterprises, is the first to be affected. For example, with regard to the capital requirements in credit risks, the constitution of medium- and small-sized enterprises is not as sound as large-sized enterprises’, and the financial transparency of medium- and small-sized enterprises is insufficient that the credit risk of financial institution would be lifted comparatively; and then, the finance and credit investigation of medium- and small-sized enterprises would become strict and conservative, thus the finance difficulty and cost of medium- and small-sized enterprises would be increased substantially.
In view of this, this study regards the electronics industry from medium- and small-sized enterprises as the main study objects, and data mining procedures are used so as to establish the credit scoring system. To get the best probability model of default, different oversampling ratios are used one by one to match such statistical models and logistic regression, Neural Network Analysis, and C&R Tree; and logistic regression model is selected for the establishment of credit scoring system after assessment. Moreover, relevant the New Basel Capital Accord standards are followed to carry out every test and verification so as to confirm that the establishments of model and credit scoring system are appropriate. The result indicates that the model has good performance in out-sample test, while credit scoring system also passes such verification standards as accuracy analysis, level segment homogeneity test, and stability analysis. Hopefully, this study result can provide a set of effective and simple credit management system for the financial institution to establish information symmetrical channel with the medium- and small-sized enterprises, so that both parties can obtain mutual balance and the crisis can be alerted in advance.
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鄭宇庭 |
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鄭宇庭 陳冠宇 |
author |
陳冠宇 |
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陳冠宇 應用資料採礦技術建置台灣中小企業之電子業信用評等模型 |
author_sort |
陳冠宇 |
title |
應用資料採礦技術建置台灣中小企業之電子業信用評等模型 |
title_short |
應用資料採礦技術建置台灣中小企業之電子業信用評等模型 |
title_full |
應用資料採礦技術建置台灣中小企業之電子業信用評等模型 |
title_fullStr |
應用資料採礦技術建置台灣中小企業之電子業信用評等模型 |
title_full_unstemmed |
應用資料採礦技術建置台灣中小企業之電子業信用評等模型 |
title_sort |
應用資料採礦技術建置台灣中小企業之電子業信用評等模型 |
publishDate |
2009 |
url |
http://ndltd.ncl.edu.tw/handle/58433574895298848218 |
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