Please use this identifier to cite or link to this item: https://ah.lib.nccu.edu.tw/handle/140.119/70269
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dc.contributor.advisor黃泓智<br>王昭文zh_TW
dc.contributor.author陳映蓉zh_TW
dc.contributor.authorChen, Ying Jungen_US
dc.creator陳映蓉zh_TW
dc.creatorChen, Ying Jungen_US
dc.date2013en_US
dc.date.accessioned2014-10-01T05:33:49Z-
dc.date.available2014-10-01T05:33:49Z-
dc.date.issued2014-10-01T05:33:49Z-
dc.identifierG0101358027en_US
dc.identifier.urihttp://nccur.lib.nccu.edu.tw/handle/140.119/70269-
dc.description碩士zh_TW
dc.description國立政治大學zh_TW
dc.description風險管理與保險研究所zh_TW
dc.description101358027zh_TW
dc.description102zh_TW
dc.description.abstract許多實證研究結果發現,股票的報酬率分佈並非常態,反而此分配具有不對稱、高峽峰和厚尾等性質;並且對於由股票所組成之投資組合之報酬率而言,其共跌之相關係數較共漲之相關係數為高。在Riccetti的研究之中,其對於債券和股票運用了copula-GARCH資產模型,進行對於宏觀資產配置模型之研究,並且得到了良好的實證結果。而Claudia Czado等人則是認為高維度的Copula函數(multivariate copula function)將可以更良好的捕捉依存結構(dependency structure),甚至比絕大多數的資產模型更靈活;這是由於高維度的copula函數可以由從二元Copula函數構建,因此Copula函數可以根據不同之資產進行二二維的變數估計以及建立模型。因此,我們採用skewed t-GARCH模型估計資產的時間序列變數以及分析殘差項(residuals),並且此殘差項估計出最配適之vine copula模型,並且利用蒙地卡羅法進行模擬,計算出最佳化的資產組合權重。其資料包含美國十個不同的指數,每個資產共有2408個日資料,近十年的歷史數據組合,以進行動態資產配置。在我們的實證結果,Copula函數能夠更精準的捕捉相依結構,並且較multivariate normal資產模型的進行動態資產配置之結果更好,具有較高的報酬與較低的資產波動。zh_TW
dc.description.abstractSome empirical studies have showed that returns of some stocks are distributed in a non-Normal way, being asymmetric or even leptokurtic which indicates equity returns are negatively skewed and fat tails. In Riccetti , a copula–GARCH model is applied and can be useful in a macro asset allocation model including bonds and stocks. And Claudia Czado et al. even suggested that multivariate copulas provide more flexibility in dependency structure than some of asset model, vine copulas which are built from bivariate copulas can even be ordered and chosen individually according to their influences under class of mixed C-vine copulas. \nHence we apply skewed t GARCH model for negatively skewed and fat tails returns and time varying vine copula model to measure conditional dependence under class of mixed Regular vine copulas for the dynamic asset allocation of portfolios containing ten different indices in America with nearly ten years historical data, compared with multivariate normal asset model. The use of Copulas makes it possible to separate the dependence model from the marginal distributions.\nWe find that the copula model appears to be useful better than the multivariate normal one for the dynamic asset allocation in our empirical result, even if it is not dominantly better than other asset models, performance of vine-copula asset model would have lower empirical volatility.en_US
dc.description.tableofcontents1.Introduction.............................................1\n2.vine copula structure....................................3\n 1.Basic definition of vine copula......................3\n 2.bivariate copula.....................................4\n 3.pair-copula decomposition............................9\n 4.c-vine, d-vine and regular vine copula..............11\n3. estimators of vine copula model........................14\n 1.chi-statistics......................................14\n 2.lambda-statistics...................................15\n 3.kendall`s tau.......................................16\n4. Stepwise estimation methodology........................17\n 1.getting data and data transformation................17\n 2.arma(1,1)-garch(1,1) model application..............17\n 3.copula selection....................................19\n 4.monte carlo simulation with rolling window..........22\n5.emperical result........................................23\n 1.the data............................................23\n 2.arma-garch approach.................................24\n 3.model selection and good of fit estimators..........29\n 4.objective function..................................30\n 5.simulation results..................................31\n6.Conclusions and possible future works...................35\n 1.future works........................................35\n 2.conclusions.........................................36\n7.references..............................................37\n8.codes and appendixes....................................38zh_TW
dc.language.isoen_US-
dc.source.urihttp://thesis.lib.nccu.edu.tw/record/#G0101358027en_US
dc.subjectvine 型相依結構函數zh_TW
dc.subjectregular vine型相依結構函數zh_TW
dc.subject資產配置zh_TW
dc.subject蒙地卡羅模擬zh_TW
dc.subject高維度分配zh_TW
dc.subject多元常態分配zh_TW
dc.subjectvine copulaen_US
dc.subjectRegular vineen_US
dc.subjectasset-allocationen_US
dc.subjectMonte Carlo simulationen_US
dc.subjecthigh dimensions distributionen_US
dc.subjectmultivariate normalen_US
dc.title以regular vine copula模型做動態資產配置zh_TW
dc.titleDynamic asset allocation with regular vine copulaen_US
dc.typethesisen
dc.relation.reference1.Aas K, Czado C, Frigessi A, Bakken H (2009). “Pair-Copula Constructions of Multiple Dependence.” Insurance: Mathematics and Economics, 44(2), 182–198.\n2.Bedford T, Cooke RM (2002). “Vines - A New Graphical Model for Dependent Random Variables.” Annals of Statistics, 30, 1031–1068.\n3.Brechmann EC, Czado C (2012). “Risk Management with High-Dimensional Vine Copulas: An Analysis of the Euro Stoxx 50.” Submitted for publication.\n4.Czado C (2010). “Pair-Copula Constructions of Multivariate Copulas.” In PJaworski, F Durante, W H¨ardle, T Rychlik (eds.), Copula Theory and Its Applications. Springer-Verlag, Berlin.\n5.Dißmann J, Brechmann EC, Czado C, Kurowicka D (2011). “Selecting and Estimating Regular Vine Copulae and Application to Financial Returns.” Submitted for publication.\n6.Joe H, Li H, Nikoloulopoulos AK (2010). “Tail Dependence Functions and Vine Copulas.” Journal of Multivariate Analysis, 101(1), 252–270.\n7.Sklar A (1959). “Fonctions de R´epartition "a n Dimensions et Leurs Marges.” Publications de l’Institut de Statistique de L’Universit´e de Paris, 8, 229–231.\n8.Garcia René, Tsafack Georges, 2011. Dependence structure and extreme comovements in international equity and bond markets, Journal of Banking & Finance Volume 35, 1954-1970.\n9.Tatsuyoshi Okimoto, 2008. New Evidence of Asymmetric Dependence Structures in International Equity Markets, Journal of Financial and Quantitative Analysis 43, 787–816.\n10.Huang, H.C., 2010. Optimal Multi-Period Asset Allocation: Matching Assets to Liability in a Discrete Model, Journal of Risk and Insurance 77(2).\n11.Kendall, M. (1938). A new measure of rank correlation. Biometrika 30,\n81–93.zh_TW
item.languageiso639-1en_US-
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item.openairecristypehttp://purl.org/coar/resource_type/c_46ec-
item.cerifentitytypePublications-
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