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Forecasting conditional correlations in stock, bond and foreign exchange markets

机译:预测股票,债券和外汇市场中的条件相关性

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The paper forecasts conditional correlations between three classes of international financial assets, namely stock, bond and foreign exchange. Two countries are considered, namely Australia and New Zealand. Forecasting will be conducted using three multivariate GARCH models, namely the CCC model [T. Bollerslev, Modelling the coherence in short-run nominal exchange rates: a multivariate generalized ARCH model, Rev. Econ. Stat. 72 (1990) 498-505], VARMA-GARCH model [S. Ling, M. McAleer, Asymptotic theory for a vector ARMA-GARCH model, Econometric Theory 19 (2003) 280-310], and VARMA-AGARCH model [M. McAleer, S. Hoti, F. Chan, Structure and asymptotic theory for multivariate asymmetric volatility, Econometric Rev., in press]. A rolling window technique is used to forecast 1-day ahead conditional correlations. To evaluate the impact of model specification on conditional correlations forecasts, this paper calculates and compares the correlations between conditional correlations forecasts resulted from the three models. The paper finds the evidence of volatility spillovers and asymmetric effect of negative and positive shock on the conditional variance in most pairs of series. However, it suggests that incorporating volatility spillovers and asymmetric do not contribute to better conditional correlations forecasts.
机译:本文预测了三类国际金融资产之间的条件相关性,即股票,债券和外汇。考虑了两个国家,即澳大利亚和新西兰。预测将使用三种多元GARCH模型进行,即CCC模型[T. Bollerslev,短期短期汇率的一致性建模:多元广义ARCH模型,Econ版。统计72(1990)498-505],VARMA-GARCH模型[S. Ling,M. McAleer,矢量ARMA-GARCH模型的渐近理论,计量经济学理论19(2003)280-310]和VARMA-AGARCH模型[M. McAleer,S。Hoti,F。Chan,《多元不对称波动的结构和渐近理论》,计量经济学修订版,付印中。滚动窗口技术用于预测提前1天的条件相关性。为了评估模型规范对条件相关性预测的影响,本文计算并比较了三个模型得出的条件相关性预测之间的相关性。本文找到了大多数对序列中波动率溢出和负冲击与正冲击对条件方差的不对称影响的证据。但是,这表明将波动率溢出和非对称性相结合并不能促进更好的条件相关性预测。

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