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    政大機構典藏 > 商學院 > 財務管理學系 > 學位論文 >  Item 140.119/48969
    Please use this identifier to cite or link to this item: https://nccur.lib.nccu.edu.tw/handle/140.119/48969


    Title: 波動自我復歸特性對股價指數選擇權評價重要嗎?
    Is Mean Reversion Feature of Volatility Important to Stock Index Option?
    Authors: 湯亞蒨
    Contributors: 杜化宇
    湯亞蒨
    Keywords: 台指選擇權
    條件波動度
    Regime-Switching
    Dispersion
    GRS-GARCH
    Date: 2009
    Issue Date: 2010-12-08 01:54:27 (UTC+8)
    Abstract: 過去文獻在探究股市報酬率波動行為時,多採用GARCH/ARCH等傳統時間序列模型,但這些模型不能解決波動度的高持續性(persistence)。本文以Gray(1996)提出的一般化狀態轉換模型(GRS-GARCH)為基礎並加入Dueker(1997)所提出的Dispersion設定,建立GRS-GARCH-K以及GRS-GRACH-DF模型來預測股市報酬率波動行為。GRS-GARCH-K模型設定最大的優點是加入Student’s t分配之自由度可隨狀態轉換,使峰態亦可隨狀態轉換,另外GRS-GRACH-DF模型除了擁有GRS-GARCH-K的特性外,還擁有均數復歸的特色。本文以單一狀態下的GARCH-N、GARCH-t模型,以及雙狀態下的GRS-GARCH、GRS-GARCH-K以及GRS-GARCH-DF模型做研究,並以台灣股價加權股價指數為研究樣本,探討並預測股價日報酬率的波動度,最後將波動度代入Black-Scholes選擇權訂價模型,探討模型之其評價效果。
    研究顯示,在樣本內以AIC和SBC檢定法則下,GRS-GARCH-DF有最好的配適能力,樣本外的預測能力在MAE、MASE、MAPE三種誤差比較法下,GRS-GARCH-DF相較於GARCH-N、GARCH-t、GRS-GARCH和GRS-GARCH-K四種模型,在訂價方面與市場價格誤差最小,並以DM檢定法證實其統計上的顯著性。因此擁有均數復歸特色的GRS-GARCH-DF在波動度的估計上相較於其他模型來的優異。
    Reference: 一、 中文部分
    1. 鄭亦妏,“在Black-Scholes評價模型下台指選擇權最適波動估計方法之研究”, 淡江大學管理科學研究所碩士論文,民國九十一年。
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    Description: 碩士
    國立政治大學
    財務管理研究所
    97357025
    98
    Source URI: http://thesis.lib.nccu.edu.tw/record/#G0097357025
    Data Type: thesis
    Appears in Collections:[財務管理學系] 學位論文

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