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    政大機構典藏 > 商學院 > 財務管理學系 > 學位論文 >  Item 140.119/60630
    Please use this identifier to cite or link to this item: https://nccur.lib.nccu.edu.tw/handle/140.119/60630


    Title: 考慮狀態轉換下的GARCH模型配適程度與預測能力之驗證 -以道瓊歐洲石油天然氣指數期貨為例
    GARCH models under Regime Switching - DJ EURO STOXX OIL & GAS Index Futures
    Authors: 張庭瑋
    Contributors: 杜化宇
    張庭瑋
    Keywords: GARCH
    Regime Switching
    狀態轉換
    指數期貨
    共同基金
    Date: 2009
    Issue Date: 2013-09-09 11:28:36 (UTC+8)
    Abstract:   本篇論文主要在檢視Fong與See (2001) 所提出的假說,將其應用於道瓊歐洲石油天然氣指數期貨 (DJ EURO STOXX OIL & GAS Index Futures) 上,是否能得到相同的驗證。

      在是否加入狀態轉換考量的檢定中,本文採用AIC與BIC準則為判斷的基準,而由於雙狀態下BIC準則易有樣本參數過大的懲罰特性,因此其中又以AIC為較佳判斷的準則。研究結果顯示,有考量狀態轉換的Regime Switching GARCH模型配適度會較無考量狀態轉換的GARCH模型為佳。而在納入狀態轉換的考量下,在Regime Switching GARCH模型及其相關衍生模型的比較中,主要是採用RS-GARCH(1,1)-N,RS-GARCH(1,1)-t以及RS-ARCH(1,1)-t模型作為比較。這裡同樣以AIC與BIC準則為判斷的基準,研究結果顯示,在三模型中,是以RS-GARCH(1,1)-t模型具有最佳的配適度。

      在預測能力的檢定中,本研究是利用MSE、MAE與R2,來判斷何者具有較佳的解釋能力,並且以DM檢定來進一步驗證。研究結果顯示,在有考量狀態轉換的Regime Switching GARCH模型與無考量狀態轉換的GARCH模型中,是以有考量狀態轉換的Regime Switching GARCH模型具有較佳的預測能力;而在RS-GARCH(1,1)-N,RS-GARCH(1,1)-t以及RS-ARCH(1,1)-t三種衍生模型的比較中,又以同時考量t分配以及有狀態轉換的RS-GARCH(1,1)-t模型具有較佳的預測能力。
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    3. Alizadeh, Amir H., Nikos K. Nomikos and Panos K. Pouliasis (2008), “A Markov regime switching approach for hedging energy commodities”, Journal of Banking & Finance, Vol.32, Issue 9, P.1970-1983.

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    5. Bollerslev, T. (1986), “Generalized Autoregressive Conditional Heteroscedasticity”, Journal of Econometrics, Vol.31, P.307-27.

    6. Bollerslev, T., R. Y. Chou, and K. F. Kroner (1992), “ARCH Modeling in Finance: A Review of the Theory and Empirical Evidence”, Journal of Econometrics, Vol.52, P.5-59.

    7. Canarella, Giorgio and Stephen K. Pollard (2007), “A switching ARCH (SWARCH) model of stock market volatility:some evidence from Latin America”, International Review of Economics, Vol.54, Issue 12, P.445-462.

    8. Chou, R. F. (1988), “Volatility Persistence and Stock Valuations: Some Empirical Evidence Using GARCH”, Journal of Applied Econometrics, Vol.3, P.279-294.

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    20. Li, Ming-Yuan Leon and Hsiou-Wei William Lin (2003) “Examining the Volatility of Taiwan Stock Index Returns via a Three-Volatility-Regime Markov-Switching ARCH Model”, Review of Quantitative Finance and Accounting, Vol.21, Issue 2 P.123-39.

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    25. EUREX:http://www.eurexchange.com/
    Description: 碩士
    國立政治大學
    財務管理研究所
    96357035
    98
    Source URI: http://thesis.lib.nccu.edu.tw/record/#G0096357035
    Data Type: thesis
    Appears in Collections:[財務管理學系] 學位論文

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