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Scalable Bayesian dynamic covariance modeling with variational Wishart and inverse Wishart processes

机译:可扩展的贝叶斯动态协方差与变分惠窗和逆不良流程建模

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We implement gradient-based variational inference routines for Wishart and inverse Wishart processes, which we apply as Bayesian models for the dynamic, heteroskedastic covariance matrix of a multivariate time series. The Wishart and inverse Wishart processes are constructed from i.i.d. Gaussian processes, existing variational inference algorithms for which form the basis of our approach. These methods are easy to implement as a black-box and scale favorably with the length of the time series, however, they fail in the case of the Wishart process, an issue we resolve with a simple modification into an additive white noise parameterization of the model. This modification is also key to implementing a factored variant of the construction, allowing inference to additionally scale to high-dimensional covariance matrices. Through experimentation, we demonstrate that some (but not all) model variants outperform multivariate GARCH when forecasting the covariances of returns on financial instruments.
机译:我们为Wishart和Recense Wishart进程实施了基于梯度的变分别推论例程,我们将作为动态,HoridoSkedastic Covariance矩阵的贝叶斯模型应用多变量时间序列。 Wishart和逆出Wellart进程由I.I.D构建。高斯过程,现有的变分推理算法,其形成了我们的方法的基础。这些方法很容易实现为黑盒子,并在时间序列的长度上展示了很好的规模,但是,在Wishart过程的情况下,它们失败了,我们通过简单的修改来解决了一种添加到附加白噪声参数化的问题模型。该修改也是实现结构的因子变体的关键,允许推断为高维协方差矩阵。通过实验,我们证明了一些(但不是全部)模型变体在预测金融工具上的回报的协调中心时优于多变量的加速。

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