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Geometric optimisation on positive definite matrices with application to elliptically contoured distributions

机译:应用于椭圆形状分布的正面矩阵的几何优化

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Hermitian positive definite (hpd) matrices recur throughout machine learning, statistics, and optimisation. This paper develops (conic) geometric optimisation on the cone of hpd matrices, which allows us to globally optimise a large class of nonconvex functions of hpd matrices. Specifically, we first use the Riemannian manifold structure of the hpd cone for studying functions that are nonconvex in the Euclidean sense but are geodesically convex (g-convex), hence globally optimisable. We then go beyond g-convexity, and exploit the conic geometry of hpd matrices to identify another class of functions that remain amenable to global optimisation without requiring g-convexity. We present key results that help recognise g-convexity and also the additional structure alluded to above. We illustrate our ideas by applying them to likelihood maximisation for a broad family of elliptically contoured distributions: for this maximisation, we derive novel, parameter free fixed-point algorithms. To our knowledge, ours are the most general results on geometric optimisation of hpd matrices known so far. Experiments show that advantages of using our fixed-point algorithms.
机译:正定(HPD)矩阵的位置再次出现在机器学习,统计和优化。本文开发上HPD矩阵的锥形,这使我们能够全局优化的一大类HPD矩阵的非凸函数(二次曲线)的几何优化。具体地讲,我们首先使用HPD锥体的黎曼流形结构用于研究是在欧几里得意义上的非凸但最短线凸的(G-凸)函数,因此在全球范围optimisable。然后,我们超越G-凸,并利用HPD矩阵的圆锥形状来识别另一类是仍然服从全局优化,无需G-凸函数。我们目前主要成果帮助识别G-凸,也是额外的结构上面提到。我们通过应用这些可能性最大化为椭圆轮廓分布的大家族中阐述我们的观点:此最大化,我们得出新的,无参数的定点算法。据我们所知,我们是迄今已知的HPD矩阵几何优化最普遍的结果。实验表明,使用我们的定点算法是优势。

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