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Concurrent processing of heteroskedastic vector-valued mixture density models

机译:异方差矢量值混合密度模型的并行处理

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We introduce a combined two-stage least-squares (2SLS)-expectation maximization (EM) algorithm for estimating vector-valued autoregressive conditional heteroskedasticity models with standardized errors generated by Gaussian mixtures. The procedure incorporates the identification of the parametric settings as well as the estimation of the model parameters. Our approach does not require a priori knowledge of the Gaussian densities. The parametric settings of the 2SLS_EM algorithm are determined by the genetic hybrid algorithm (GHA). We test the GHA-driven 2SLS_EM algorithm on some simulated cases and on international asset pricing data. The statistical properties of the estimated models and the derived mixture densities indicate good performance of the algorithm. We conduct tests on a massively parallel processor supercomputer to cope with situations involving numerous mixtures. We show that the algorithm is scalable.
机译:我们引入组合的两阶段最小二乘(2SLS)-期望最大化(EM)算法,以估计具有高斯混合生成的标准化误差的向量值自回归条件异方差模型。该过程包括参数设置的识别以及模型参数的估计。我们的方法不需要先验知识的高斯密度。 2SLS_EM算法的参数设置由遗传混合算法(GHA)确定。我们在一些模拟案例和国际资产定价数据上测试了GHA驱动的2SLS_EM算法。估计模型的统计特性和导出的混合密度表明该算法具有良好的性能。我们在大型并行处理器超级计算机上进行测试,以应对涉及多种混合物的情况。我们证明了该算法是可扩展的。

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