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    題名: 資料採礦應用於中小企業服務業信用風險模型建置
    其他題名: Applications of Data Mining in Establishing Credit Risks Model of Service of SMEs
    作者: Hsieh, Sang-Wen;Lin, Chi-Feng
    謝尚文
    貢獻者: 統計系
    關鍵詞: 新巴賽爾資本協定;資料採礦;羅吉斯迴歸;信用評等
    Basel II;Data Mining;Logistic Regression;Credit Score
    日期: 2009-10
    上傳時間: 2015-10-06 14:51:52 (UTC+8)
    摘要: 2008年,美國華爾街危機影響全球金融市場,即使美國擬出許多救市計畫,全球股市依舊暴跌。在此危機衝擊下,各大金融機構不但利潤下滑,且資產減記和信貸損失也愈來愈嚴重。造成此一現象的主因即是次級房貸的影響,次級房貸主要是針對收入低、信用不佳卻需要貸款購屋的民眾,這類客戶通常借貸不易,倘若銀行內部沒有完善的評等機制那放款則需承受較大的違約風險。為因應此趨勢,本研究以台灣未上市中小企業為實例,資料的觀察期間為2003至2005年,透過資料採礦流程,建構企業違約風險模型及其信用評等系統。本研究分別利用羅吉斯迴歸、類神經網路、和分類迴歸樹三種方法建立模型並加以評估比較其預測能力。發現羅吉斯迴歸模型對於違約戶的預測能力及有效性皆優於其他兩者,並選定為本研究之最終模型,並對選定之模型作評估及驗證,發現模型的預測能力表現尚屬穩定,確實能夠在銀行授信流程實務中加以應用。
    In 2008, the financial crisis on Wall Street had severe impacted the global economy. Although the US government has drawn up regulatory policies in an attempt to save the stock market, the value of global stock market has shrunk drastically. As such, the profits of many financial institutes` have not only plunged, their value of assets have decreased while loss related to mortgage became more severe. The main cause behind this global phenomenon can be attributed to the effect of subprime mortgages. Subprime mortgages are mainly aimed at consumers who have low income and poor credit history but wish to purchase homes through the means of mortgage. These consumers usually find it difficult to obtain mortgage loans. If banks do not have a well structured evaluation system, they would have to bear more risks in the case of a default. To better understand this trend, this research chooses middle and small private enterprises as its samples. The period of observation is 2003 to 2005. Using the data mining process, this research builds a model that shows the risk associated with contract failure and credit score system.The research builds a model based on logistic regression, Neural Network, and cart to compare and contrast each of the three model`s ability to predict. The result shows that logistic regression is better at predicting defaults and is more effective than the other two models. The research, therefore, concludes logistic regression model as the research`s final model to study and evaluate. In process, the research result demonstrates that the logistic regression model makes more precise prediction and its prediction is fairly stable. Logistic regression model is capable for banks to employ in performing credit check.
    關聯: Journal of Data Analysis, 4(5), 55-82
    資料類型: article
    顯示於類別:[經濟學系] 期刊論文

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