系統識別號 | U0002-1203200709033200 |
---|---|
DOI | 10.6846/TKU.2007.00314 |
論文名稱(中文) | 台灣信用卡逾期放款的決定因子---以C商業銀行為例 |
論文名稱(英文) | Determinant Factors of Non-Performing Loans of Credit Cards in Taiwan---An Example from a Commercial C Bank |
第三語言論文名稱 | |
校院名稱 | 淡江大學 |
系所名稱(中文) | 國際商學碩士在職專班 |
系所名稱(英文) | Executive Master's Program of Business Administration (EMBA) in International Commerce |
外國學位學校名稱 | |
外國學位學院名稱 | |
外國學位研究所名稱 | |
學年度 | 95 |
學期 | 1 |
出版年 | 96 |
研究生(中文) | 余支萬 |
研究生(英文) | Chih-Wan Yu |
學號 | 793400259 |
學位類別 | 碩士 |
語言別 | 英文 |
第二語言別 | |
口試日期 | 2007-01-12 |
論文頁數 | 117頁 |
口試委員 |
指導教授
-
鮑世亨
指導教授 - 蔡政言 委員 - 林光賢 委員 - 楊曉文 委員 - 楊志海 |
關鍵字(中) |
信用卡 徵審 風險管理 風險變數因子 逾期放款 羅吉斯迴歸模型 |
關鍵字(英) |
NPLs Risk management Credit card Credit risk Credit investigation Logistic Regression Model |
第三語言關鍵字 | |
學科別分類 | |
中文摘要 |
本研究旨在分析探討銀行信用卡逾放風險的決定因子。因為近年來台灣銀行業的信用卡發卡泛濫,各銀行力圖搶攻信用卡市場商機,冀求快速高獲利高報酬,不顧所謂的超然穩健的徵審制度,而風險控管或被忽略,或被曲解,或蓄意束之高閣,發卡銀行甚少澈底認真的去執行安控措施。換言之,許多銀行失敗於監控其風險管理。銀行抱持上述的心理態度,肆無忌憚的超量發行信用卡,逾放比率如影隨形,伴隨漫無節制發卡量節節攀升。各銀行極力爭相濫發信用卡數年後的結果,也養成了信用卡持卡人濫用其信用,特別是大多數年青族群,台灣也因此產生了「解放卡奴」的嚴重社會問題。 台灣許多銀行業者深陷高額逾期放款(NPLs)的痛苦深淵無法自拔,累積了大量的逾放風險瀕臨倒閉狀態,有可能再度引爆台灣金融風暴的危機,這些問題終於引起台灣政府及立委的關切。後來,台灣的財政部就依銀行法第61條之1的規定採行監理措施,政府力勸銀行業者應本持保守審慎的態度來發卡。銀行除需加強風險控管外,也應加速打銷呆帳以確保其信用卡的資產品質。 在國際方面,巴塞爾銀行監督管理委員會另立「新巴塞爾資本協定」是以1988年所訂的資本協定為基本架構;它是專為銀行在營運上面臨風險時應有之資本需求,以及改善銀行資本架構的敏感性而設的,藉以強化金融體系的穩定,進一步全球性的倡導銀行資本的適足性,並鼓勵銀行改善其風險管理。連美國聯準會(Fed)前主席葛林斯班也在其演說中強調,銀行應有更多的風險控管系統在其運作及結構上。對大部份銀行而言,「放款」是其明顯最大的「信用風險」來源,銀行在信用風險上需有深切敏感的察覺,並應有加以驗證、衡量、監視、控管等措施。 因此,各發卡銀行應如何去除發卡風險?那些是造成逾期放款(NPLs)的決定因子?銀行應如何創造獲利而不帶來逾放(NPLs)?卡債風暴災難之後,這些都成發卡銀行的熱門話題。本研究嘗試提供一種較佳的方式來辨識逾期放款(NPLs)的決定因子。我們以台灣某 C 商業銀行的信用卡逾期放款(NPLs)為主要研究對象,資料的抽樣期間以該行2003~2005年的發卡量為標的,隨機抽取發卡申請書總計330件,其中229件為「正常戶」;101件為「逾期戶」。而且就信用卡申請書所載之借戶資料,及聯徵中心備查之申戶信用資料各取5個自變數共10個,運用羅吉斯迴歸模型建立發卡授信評量模式。我們的實證發現如下: 一、發卡授信之顯著風險變數為年齡、教育程度(高中)、每月所得收 入、無擔保放款對每月所得比率、每月償還最低額、他行查詢次 數、持信用卡數等七種。 二、輸入十四個相關重要風險變數進入羅吉斯迴歸模型 (Logistic Regression Model) 計算,結果發現上述七種風險變數對於信 用卡逾期放款戶的產生,確實有一定程度以上的影響力量,信用 卡業務的損益關係該七個因子控管的良窳,建議發卡銀行應嚴密 的追蹤、監控與防範該七因子。 三、有別於其他相關研究,本研究明確指出除依本研究羅吉斯迴歸模 型(LR Model-8)監控七種風險變數因子,篩選優良申戶承作外, 應認真落實「風險管理」,信用卡發卡銀行想要有效防止逾期放 款(NPLs)兩者缺一不可,否則NPLs遲早會再度毀滅信用卡發卡 行。 |
英文摘要 |
The main purpose of this research is trying to analyze and to explore the determinant factors of Non-Performing Loans (NPLs) of credit cards. Years lately, the Taiwanese banks massively and abusively issued credit cards attempting to seize the business opportunities of market share; they actively intended to gain their speedy incomes and high returns. In spite of what is so-called stable and independent "Credit Investigation System", the risk management was totally to be neglected or to be abandoned on purpose, too. The credit card issuer banks seldom implemented security measures seriously and thoroughly; In other words, those banks failed to supervise their risk management. The above attitudes, which resulted in issuing excessive numbers of credit cards, simultaneously it accompanied the numbers of ever-increasing credit cards with the increasing of NPLs ratio, which was going high. After issuer banks aggressively developed credit card business for years, the rampant issuance of credit card also has led to a widespread abuse of credit by the cardholder, especially for most of younger ones. Many Taiwanese banks eventually fell into traps, they suffered from high NPLs severely, and it seriously incurred “Liberating Card Slave” problem in Taiwanese society. Lots of banks were close to bankruptcy due to poor risk management, it was almost to incur another financial crisis to Taiwan. Finally those problems were deeply concerned by Taiwanese Government and the policy makers. Later on, the Ministry of Finance took a supervisory action. The Government urged banks holding conservative and prudent attitudes to issue their credit cards. They need to enhance banks’ risk management, and they have to accelerate writing off the bad debts of credit cards as quickly as possible to improving their credit-card asset qualities as well. The international context,"Basel II Framework" was built by BCBS. It was set for capital requirements and to improve the capital framework's sensitivity to the risks that banks face. Also the Speech of Chairman Alan Greenspan emphasized that banks should be more on the overall structure and operation of risk-management systems. Bank’s loans are the largest and most obvious source of credit risk; however, banks should have a keen awareness to identify, measure, monitor, and control credit risk Hence, banks how to remove credit risk when they issue credit cards? Which are the Determinant factors of NPLs of Credit Cards? Banks how to make profit without NPLs? After the disaster of card-debt storm, these became the hot issues among the cards issuer banks. This research tries to offer a better way to recognize determinant factors of credit-card NPLs. We focused on credit-card NPLs of Commercial C Bank in Taiwan. The period of sampled data was from year 2003 to 2005 of issued credit cards. And we randomly sampled the data 330 cases in total, we found that 209 cases were “normal accounts”, and 101 cases were “overdue accounts”. Furthermore, we selected 10 independent variables from application forms and the personal credit standing records at JCIC. Applying Logistic Regression Model to construct a card issuing Evaluation Model, We found the evidences as follows: 1.The analysis of variances reveals the factors in LR Model with a significant risk, such as the following 7 variables: Age, Education (high school), Monthly income, Unsecured loans to monthly income rate, Payment behavior (minimum payment), Frequency of inquiry, and Holding credit cards. 2.The above related determinant factors of NPLs have a significant interaction to the occurrence of overdue accounts, hence the 7 factors chiefly concerned with a credit card issuer bank will gain profit or gain loss on its credit card business. We recommend the banks to supervise, identify, and control them severely. 3.The “LR Model-8” of this thesis differ from the other relevant studies, we suggest specifically that if the banks wish to prevent NPLs efficiently; before a card being approved the banks need to use “LR Model-8” to control determinant factors of NPLs and having a sound “Risk Management” system, none of them can be neglected, otherwise the NPLs will ruin the card-issuer banks again sooner or later. |
第三語言摘要 | |
論文目次 |
Table of Contents Abstract...................................................I Acknowledgement..........................................III Table of Contents.........................................IV List of Tables............................................VI List of Figures..........................................VII Chapter 1 Introduction.....................................1 1.1 Background and Motive..................................1 1.2 Thesis Purpose.........................................8 1.3 Thesis Framework......................................12 1.4 Thesis Scope..........................................13 1.5 Reasons of making this Thesis.........................15 Chapter 2 Literature Review ..............................16 2.1 Credit-lending business and its risk..................16 2.2 Banks assess customer’s credit by 5p-principle.......17 2.3 How to Evaluate a Consumer Loan.......................19 2.4 The Characteristics of Consumer Loan..................20 2.5 The Factors of Assessment of Consumer-Loan Credit.....20 2.6 Relevant Studies of Credit Card.......................21 2.7 The Derivation and Definition of Credit Card..........26 2.8 The Status Quo of Credit Card Business in Taiwan......37 2.9 The Measures of Credit Investigation..................55 Chapter 3 Research Design.................................26 3.1 Conventional Credit Rating Model......................63 3.2 Research Approach.....................................66 3.3 Research Method.......................................68 3.4 Research Structure....................................87 Chapter 4 Research Model..................................90 4.1 Theoretical Model: Logistic Regression................90 4.2 Empirical Model: Model-Building for Logistic Regression ..........................................................92 Chapter 5 Conclusion and Suggestion......................107 5.1 Conclusion of the Thesis.............................107 5.2 Suggestion of the Thesis.............................108 References...............................................110 Appendix.................................................112 List of Tables Table 1-1 Non-performing Loans Ratio and Amount Statistics 02 Table 1-2 Consumer Loans 03 Table 1-3 The World’s Revolving Credit Interest Rates of Credit Cards 05 Table 1-4 National Economic Trends of ROC 07 Table 1-5 Important Credit Card Business and Financial Information 08 Table 2-1 The relevant studies of credit card risk management 25 Table 2-2 The World Top Five Largest Credit-card Brands in Taiwan 38 Table 2-3 Important Credit Card Business and Financial Information 39 Table 2-4 The Stratistics of Credit-Card Business in Taiwan 40 Table 3-1 Credit Grade and Credit Limit for Credit Card 64 Table 3-2 Credit Scoring List for Credit Card 65 Table 3-3 The Credit card Information of C Bank 69 Table 3-4 Classified Variables and Definitions 70 Table 3-5 Cross Tabulation of Age between Normal and Overdue 76 Table 3-6 Cross Tabulation of Sex between Normal and Overdue 77 Table 3-7 Cross Tabulation of Education between Normal and Overdue 78 Table 3-8 Cross Tabulation of Employment between Normal and Overdue 79 Table 3-9 Cross Tabulation of Monthly Income between Normal and Overdue 80 Table 3-10 Cross Tabulation of Unsecured Loans Rate between Normal and Overdue 81 Table 3-11 Cross Tabulation of Amount Owed between Normal and Overdue 82 Table 3-12 Cross Tabulation of Payment Behavior between Normal and Overdue 83 Table 3-13 Cross Tabulation of Frequency of Inquiry between Normal and Overdue 84 Table 3-14 Cross Tabulation of Holding Credit Card between Normal and Overdue 85 Table 3-15 The Chi-Square (χ2) Test Statistic for Normal and Overdue Accounts 86 Table 4-1 The Definition of Dummy Variables 92 Table 4-2 The Estimation Results (1) 93 Table 4-3 The Estimation Results (2) 94 Table 4-4 ANOVA Table 94 Table 4-5 Model Summary 94 Table 4-6 Significance and Remark of Coefficients of Model-1 95 Table 4-7 Significance and Remark of Coefficients of Model-8 96 List of Figures Figure 1-1 Consumer Loan VS Revolving Credit Stratistical Chart 04 Figure 1-2 The Consumer Loan Ratios in Taiwan of Year 2004 04 Figure 1-3 Per Capita National Income VS Revolving Credit of Credit Card 07 Figure 1-4 The Flow Chart of this Thesis 12 Figure 2-1 The Credit-Card Interchange Settlement flowchart of NCCC 34 Figure 2-2 How ‘s a credit card working in a public sector 36 Figure 2-3 The World Top Five Largest Credit-Card Brands in Taiwan 38 Figure 2-4 The Credit Card Business in Taiwan 40 Figure 2-5 The Governing Principles of Credit Card Business in Taiwan 42 Figure 2-6 The Flowchart of Credit Investigation 61 Figure 3-1 Cross Tabulation of Age between Normal and Overdue 76 Figure 3-2 Cross Tabulation of Sex between Normal and Overdue 77 Figure 3-3 Cross Tabulation of Education between Normal and Overdue 78 Figure 3-4 Cross Tabulation of Employment between Normal and Overdue 79 Figure 3-5 Cross Tabulation of Monthly Income between Normal and Overdue 80 Figure 3-6 Cross Tabulation of Unsecured Loans Rate between Normal and Overdue 81 Figure 3-7 Cross Tabulation of Amount Owed between Normal and Overdue 82 Figure 3-8 Cross Tabulation of Payment Behavior between Normal and Overdue 83 Figure 3-9 Cross Tabulation of Frequency of Inquiry between Normal and Overdue 84 Figure 3-10 Cross Tabulation of Holding Credit Cards between Normal and Overdue 85 Figure 3-11 Research data processing flow diagram 87 |
參考文獻 |
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