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Jensen Bregman LogDet Divergence Optimal Filtering in the Manifold of Positive Definite Matrices

机译:正定矩阵流形中的Jensen Bregman LogDet发散最优滤波

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In this paper, we consider the problem of optimal estimation of a time-varying positive definite matrix from a collection of noisy measurements. We assume that this positive definite matrix evolves according to an unknown GARCH (generalized auto-regressive conditional het-eroskedasticity) model whose parameters must be estimated from experimental data. The main difficulty here, compared against traditional parameter estimation methods, is that the estimation algorithm should take into account the fact that the matrix evolves on the PD manifold. As we show in the paper, measuring the estimation error using the Jensen Bregman LogDet divergence leads to computationally tractable (and in many cases convex) problems that can be efficiently solved using first order methods. Further, since it is known that this metric provides a good surrogate of the Riemannian manifold metric, the resulting algorithm respects the non-Euclidean geometry of the manifold. In the second part of the paper we show how to exploit this model in a maximum likelihood setup to obtain optimal estimates of the unknown matrix. In this case, the use of the JBLD metric allows for obtaining an alternative representation of Gaussian conjugate priors that results in closed form solutions for the maximum likelihood estimate. In turn, this leads to computationally efficient algorithms that take into account the non-Euclidean geometry. These results are illustrated with several examples using both synthetic and real data.
机译:在本文中,我们考虑了从噪声测量的集合中最佳估计时变正定矩阵的问题。我们假定此正定矩阵根据未知的GARCH(广义自回归条件式异方差)模型演化,该模型的参数必须从实验数据中估算出来。与传统参数估计方法相比,此处的主要困难在于,估计算法应考虑矩阵在PD流形上演化的事实。正如我们在论文中所展示的,使用Jensen Bregman LogDet散度来测量估计误差会导致可计算处理的(在许多情况下是凸的)问题,这些问题可以使用一阶方法有效地解决。此外,由于已知该度量提供了黎曼流形度量的良好替代,因此所得算法会考虑流形的非欧几里得几何形状。在本文的第二部分中,我们展示了如何在最大似然设置中利用此模型来获得未知矩阵的最佳估计。在这种情况下,使用JBLD度量可以获取高斯共轭先验的另一种表示形式,从而得出最大似然估计的封闭式解。反过来,这导致考虑非欧几里得几何的计算效率高的算法。使用综合和真实数据的几个示例说明了这些结果。

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