A Novel Approach for Hedge Ratio Decision Based on Computational Intelligence

博士 === 國立交通大學 === 資訊管理研究所 === 98 === In this study, a novel procedure combining computational intelligence and statistical methodologies is proposed to improve the accuracy of minimum -variance optimal hedge ratio (OHR) estimation over various hedging horizons. The time series of financial asset ret...

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Main Authors: Hsu, Yu-Chia, 許育嘉
Other Authors: Chen, An-Pin
Format: Others
Language:en_US
Published: 2010
Online Access:http://ndltd.ncl.edu.tw/handle/20424037343660306561
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spelling ndltd-TW-098NCTU53960312016-04-18T04:21:38Z http://ndltd.ncl.edu.tw/handle/20424037343660306561 A Novel Approach for Hedge Ratio Decision Based on Computational Intelligence 以計算智慧為基礎之新的避險比例決定方法 Hsu, Yu-Chia 許育嘉 博士 國立交通大學 資訊管理研究所 98 In this study, a novel procedure combining computational intelligence and statistical methodologies is proposed to improve the accuracy of minimum -variance optimal hedge ratio (OHR) estimation over various hedging horizons. The time series of financial asset returns are clustered hierarchically using a growing hierarchical self-organizing map (GHSOM) based on the dynamic behaviors of market fluctuation extracted by measurement of variances, covariance, price spread, and their first and second differences. Instead of using original observations, observations with similar patterns in the same cluster and weighted by a resample process are collected to estimate the OHR. Four stock market indexes and related futures contracts, including Taiwan Weighted Index (TWI), Standard & Poor's 500 Index (S&P 500), Financial Times Stock Exchange 100 Index (FTSE 100), and NIKKEI 255 Index, are adopted in empirical experiments to investigate the correlation between hedging horizon and performance. Results of the experiments demonstrate that the proposed approach can significantly improve OHR decisions for mid-term and long-term hedging compared with traditional ordinary least squares and naïve models. Chen, An-Pin 陳安斌 2010 學位論文 ; thesis 70 en_US
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description 博士 === 國立交通大學 === 資訊管理研究所 === 98 === In this study, a novel procedure combining computational intelligence and statistical methodologies is proposed to improve the accuracy of minimum -variance optimal hedge ratio (OHR) estimation over various hedging horizons. The time series of financial asset returns are clustered hierarchically using a growing hierarchical self-organizing map (GHSOM) based on the dynamic behaviors of market fluctuation extracted by measurement of variances, covariance, price spread, and their first and second differences. Instead of using original observations, observations with similar patterns in the same cluster and weighted by a resample process are collected to estimate the OHR. Four stock market indexes and related futures contracts, including Taiwan Weighted Index (TWI), Standard & Poor's 500 Index (S&P 500), Financial Times Stock Exchange 100 Index (FTSE 100), and NIKKEI 255 Index, are adopted in empirical experiments to investigate the correlation between hedging horizon and performance. Results of the experiments demonstrate that the proposed approach can significantly improve OHR decisions for mid-term and long-term hedging compared with traditional ordinary least squares and naïve models.
author2 Chen, An-Pin
author_facet Chen, An-Pin
Hsu, Yu-Chia
許育嘉
author Hsu, Yu-Chia
許育嘉
spellingShingle Hsu, Yu-Chia
許育嘉
A Novel Approach for Hedge Ratio Decision Based on Computational Intelligence
author_sort Hsu, Yu-Chia
title A Novel Approach for Hedge Ratio Decision Based on Computational Intelligence
title_short A Novel Approach for Hedge Ratio Decision Based on Computational Intelligence
title_full A Novel Approach for Hedge Ratio Decision Based on Computational Intelligence
title_fullStr A Novel Approach for Hedge Ratio Decision Based on Computational Intelligence
title_full_unstemmed A Novel Approach for Hedge Ratio Decision Based on Computational Intelligence
title_sort novel approach for hedge ratio decision based on computational intelligence
publishDate 2010
url http://ndltd.ncl.edu.tw/handle/20424037343660306561
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