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Nonparametric correlation models for portfolio allocation

机译:投资组合分配的非参数相关模型

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This article proposes time-varying nonparametric and semiparametric estimators of the conditional cross-correlation matrix in the context of portfolio allocation. Simulations results show that the nonparametric and semiparametric models are best in DGPs with substantial variability or structural breaks in correlations. Only when correlations are constant does the parametric DCC model deliver the best outcome. The methodologies are illustrated by evaluating two interesting portfolios. The first portfolio consists of the equity sector SPDRs and the S&P 500, while the second one contains major currencies. Results show the nonparametric model generally dominates the others when evaluating in-sample. However, the semiparametric model is best for out-of-sample analysis.
机译:本文提出了在投资组合分配的情况下条件互相关矩阵的时变非参数和半参数估计量。仿真结果表明,非参数模型和半参数模型在DGP中具有最佳的可变性或相关性的结构破坏时是最佳的。仅当相关性恒定时,参数DCC模型才能提供最佳结果。通过评估两个有趣的投资组合来说明这些方法。第一个投资组合包括股票部门SPDR和S&P 500,第二个投资组合包含主要货币。结果表明,在评估样本时,非参数模型通常会主导其他模型。但是,半参数模型最适合样本外分析。

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