Copula-Based Factor Model for Credit Risk Analysis

博士 === 國立交通大學 === 財務金融研究所 === 105 === A standard quantitative method to assess credit risk employs a factor model based on joint multivariate normal distribution properties. By extending the one-factor Gaussian copula model to produce a more accurate default forecast, this paper proposes the incorpo...

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Main Authors: Lu, Meng-Jou, 呂孟柔
Other Authors: Wang, Keh-Luh
Format: Others
Language:en_US
Published: 2017
Online Access:http://ndltd.ncl.edu.tw/handle/nt76r9
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spelling ndltd-TW-105NCTU53040342019-05-16T00:08:10Z http://ndltd.ncl.edu.tw/handle/nt76r9 Copula-Based Factor Model for Credit Risk Analysis 因子關聯結構模型應用於信用風險分析 Lu, Meng-Jou 呂孟柔 博士 國立交通大學 財務金融研究所 105 A standard quantitative method to assess credit risk employs a factor model based on joint multivariate normal distribution properties. By extending the one-factor Gaussian copula model to produce a more accurate default forecast, this paper proposes the incorporation of a state-dependent recovery rate into the conditional factor loading and to model them sharing a unique common factor. The common factor governs the default rate and recovery rate simultaneously, implicitly creating their association. In accordance with Basel III, this paper shows that the tendency toward default during a hectic period is governed more by systematic risk than by idiosyncratic risk. Among those considered, the model with random factor loading and a state-dependent recovery rate is shown to be superior in terms of default prediction. Wang, Keh-Luh Lee, Han-Hsing 王克陸 李漢星 2017 學位論文 ; thesis 47 en_US
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language en_US
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sources NDLTD
description 博士 === 國立交通大學 === 財務金融研究所 === 105 === A standard quantitative method to assess credit risk employs a factor model based on joint multivariate normal distribution properties. By extending the one-factor Gaussian copula model to produce a more accurate default forecast, this paper proposes the incorporation of a state-dependent recovery rate into the conditional factor loading and to model them sharing a unique common factor. The common factor governs the default rate and recovery rate simultaneously, implicitly creating their association. In accordance with Basel III, this paper shows that the tendency toward default during a hectic period is governed more by systematic risk than by idiosyncratic risk. Among those considered, the model with random factor loading and a state-dependent recovery rate is shown to be superior in terms of default prediction.
author2 Wang, Keh-Luh
author_facet Wang, Keh-Luh
Lu, Meng-Jou
呂孟柔
author Lu, Meng-Jou
呂孟柔
spellingShingle Lu, Meng-Jou
呂孟柔
Copula-Based Factor Model for Credit Risk Analysis
author_sort Lu, Meng-Jou
title Copula-Based Factor Model for Credit Risk Analysis
title_short Copula-Based Factor Model for Credit Risk Analysis
title_full Copula-Based Factor Model for Credit Risk Analysis
title_fullStr Copula-Based Factor Model for Credit Risk Analysis
title_full_unstemmed Copula-Based Factor Model for Credit Risk Analysis
title_sort copula-based factor model for credit risk analysis
publishDate 2017
url http://ndltd.ncl.edu.tw/handle/nt76r9
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AT lǚmèngróu yīnziguānliánjiégòumóxíngyīngyòngyúxìnyòngfēngxiǎnfēnxī
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