The Comparison Between the Prediction Power of Neural Networks and Logistic Regression Analysis on the Auto Physical Insurance Claim / 類神經網路與羅吉斯迴歸分析方法對於車體損失險出險預測能力之比較

碩士 / 逢甲大學 / 保險所 / 93 / This study uses the private auto physical insurance policy holders of a property and casualty insurance company in Taiwan as the research objects, and divides the data into sets of in-the-sample and out-of-the-sample data. We, first, set up the claim prediction model by in-the-sample data, and then test the prediction power by out-of-the-sample data. Finally, the prediction power for the private auto physical insurance claim by logistic regression and neural networks analysis is carried out by confusion matrix.
Our empirical results show that the determinants for private auto physical insurance claim of logistic regression and neural networks analysis are quite consistent. Besides the current premium factors for private auto physical insurance, including the variables of insurance type, exhaust volume, insurance beginning year, and living area can increase the prediction correct percentage for insurance claim. The overall prediction power of neural network analysis is better than logistic regression analysis for in-the-sample data, but worse for out-of-the sample data.

Identiferoai:union.ndltd.org:TW/093FCU05218005
Date January 2005
CreatorsWei-Ling Chang, 張緯翎
Contributorsnone, 洪介偉
Source SetsNational Digital Library of Theses and Dissertations in Taiwan
Languagezh-TW
Detected LanguageEnglish
Type學位論文 ; thesis
Format65

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