The Analysis and Application on Data Mining for Customer of Life Insurance

碩士 === 輔仁大學 === 應用統計學研究所 === 93 === It is common to use number deciding method to evaluate the risk of life insurance. When there are more than two risk factors existing on the insured, however, the index must be revised depending on the underwriting experience. If the possible related factors could...

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Main Authors: Kuo, Liang-Fen, 郭良芬
Other Authors: Shia, Ben-Chang
Format: Others
Language:zh-TW
Published: 2005
Online Access:http://ndltd.ncl.edu.tw/handle/61418359044819718532
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spelling ndltd-TW-093FJU005060522016-06-10T04:15:12Z http://ndltd.ncl.edu.tw/handle/61418359044819718532 The Analysis and Application on Data Mining for Customer of Life Insurance DataMining在人身保險業保戶特性之分析應用 Kuo, Liang-Fen 郭良芬 碩士 輔仁大學 應用統計學研究所 93 It is common to use number deciding method to evaluate the risk of life insurance. When there are more than two risk factors existing on the insured, however, the index must be revised depending on the underwriting experience. If the possible related factors could be analyzed from the historical claim data by statistics methods and information technology, it should be able to advance the approval procedures and quality of the policy of the insurance company. The main goal of this research is to do calculation and steps of data mining by standard procedures of the CRISP-DM, and to transform and clarify data in order to acquire the appropriate model. The first step is using data description to explore all the information. Then, clustering the insured of different occupations by the Cluster K-Means Analytic method. It can assist underwriters to verify the policy, decrease the short-term claim occurrence rate, prevent adverse selection, improve the quality of the policy, and decrease the policy risk of the life insurance company. Shia, Ben-Chang 謝邦昌 2005 學位論文 ; thesis 61 zh-TW
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description 碩士 === 輔仁大學 === 應用統計學研究所 === 93 === It is common to use number deciding method to evaluate the risk of life insurance. When there are more than two risk factors existing on the insured, however, the index must be revised depending on the underwriting experience. If the possible related factors could be analyzed from the historical claim data by statistics methods and information technology, it should be able to advance the approval procedures and quality of the policy of the insurance company. The main goal of this research is to do calculation and steps of data mining by standard procedures of the CRISP-DM, and to transform and clarify data in order to acquire the appropriate model. The first step is using data description to explore all the information. Then, clustering the insured of different occupations by the Cluster K-Means Analytic method. It can assist underwriters to verify the policy, decrease the short-term claim occurrence rate, prevent adverse selection, improve the quality of the policy, and decrease the policy risk of the life insurance company.
author2 Shia, Ben-Chang
author_facet Shia, Ben-Chang
Kuo, Liang-Fen
郭良芬
author Kuo, Liang-Fen
郭良芬
spellingShingle Kuo, Liang-Fen
郭良芬
The Analysis and Application on Data Mining for Customer of Life Insurance
author_sort Kuo, Liang-Fen
title The Analysis and Application on Data Mining for Customer of Life Insurance
title_short The Analysis and Application on Data Mining for Customer of Life Insurance
title_full The Analysis and Application on Data Mining for Customer of Life Insurance
title_fullStr The Analysis and Application on Data Mining for Customer of Life Insurance
title_full_unstemmed The Analysis and Application on Data Mining for Customer of Life Insurance
title_sort analysis and application on data mining for customer of life insurance
publishDate 2005
url http://ndltd.ncl.edu.tw/handle/61418359044819718532
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