The Evaluation of Risk of Personal Physical Damage Insurance Underwriting Decision –An application of two-stage regression

碩士 === 正修科技大學 === 經營管理研究所 === 99 === Automobile car body insurance occupies the high proportion among car insurance. Therefore the accuracy of insurance payment estimation of automobile car body determine the performance of the insurance company. This research makes use of two stage regression model...

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Main Authors: TZU-LUNG CHUANG, 莊子龍
Other Authors: 鄭舜仁
Format: Others
Language:zh-TW
Published: 2011
Online Access:http://ndltd.ncl.edu.tw/handle/09181316979945104286
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spelling ndltd-TW-099CSU004570172015-10-13T20:32:28Z http://ndltd.ncl.edu.tw/handle/09181316979945104286 The Evaluation of Risk of Personal Physical Damage Insurance Underwriting Decision –An application of two-stage regression 自用車車體損失險核保決策風險評估- 兩階段迴歸模型之應用 TZU-LUNG CHUANG 莊子龍 碩士 正修科技大學 經營管理研究所 99 Automobile car body insurance occupies the high proportion among car insurance. Therefore the accuracy of insurance payment estimation of automobile car body determine the performance of the insurance company. This research makes use of two stage regression models to analyze the accuracy of insurance estimation. By Mill's lambda value significance, we can apply two stages regression model to avoid more sample bias when traditional regression model applied. Besides, Heckman sample choice model has better prediction ability than the traditional model. 鄭舜仁 2011 學位論文 ; thesis 0 zh-TW
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description 碩士 === 正修科技大學 === 經營管理研究所 === 99 === Automobile car body insurance occupies the high proportion among car insurance. Therefore the accuracy of insurance payment estimation of automobile car body determine the performance of the insurance company. This research makes use of two stage regression models to analyze the accuracy of insurance estimation. By Mill's lambda value significance, we can apply two stages regression model to avoid more sample bias when traditional regression model applied. Besides, Heckman sample choice model has better prediction ability than the traditional model.
author2 鄭舜仁
author_facet 鄭舜仁
TZU-LUNG CHUANG
莊子龍
author TZU-LUNG CHUANG
莊子龍
spellingShingle TZU-LUNG CHUANG
莊子龍
The Evaluation of Risk of Personal Physical Damage Insurance Underwriting Decision –An application of two-stage regression
author_sort TZU-LUNG CHUANG
title The Evaluation of Risk of Personal Physical Damage Insurance Underwriting Decision –An application of two-stage regression
title_short The Evaluation of Risk of Personal Physical Damage Insurance Underwriting Decision –An application of two-stage regression
title_full The Evaluation of Risk of Personal Physical Damage Insurance Underwriting Decision –An application of two-stage regression
title_fullStr The Evaluation of Risk of Personal Physical Damage Insurance Underwriting Decision –An application of two-stage regression
title_full_unstemmed The Evaluation of Risk of Personal Physical Damage Insurance Underwriting Decision –An application of two-stage regression
title_sort evaluation of risk of personal physical damage insurance underwriting decision –an application of two-stage regression
publishDate 2011
url http://ndltd.ncl.edu.tw/handle/09181316979945104286
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