A smooth and strictly convex function on an open convex domain induces both (1) a Hessian manifold with respect to the standard flat Euclidean connection, and (2) a dually flat space of information geometry. We first review these constructions and illustrate how to instantiate them for (a) full regular exponential families from their partition functions, (b) regular homogeneous cones from their characteristic functions, and (c) mixture families from their Shannon negentropy functions. Although these structures can be explicitly built for many common examples of the first two classes, the differential entropy of a continuous statistical mixture with distinct prescribed density components sharing the same support is hitherto not known in closed form, hence forcing implementations of mixture family manifolds in practice using Monte Carlo sampling. In this work, we report a notable exception: The family of mixtures defined as the convex combination of two prescribed and distinct Cauchy distributions. As a byproduct, we report closed-form formula for the Jensen-Shannon divergence between two mixtures of two prescribed Cauchy components.
翻译:在开放的 convex 域上,一个光滑和严格的 convex 函数在开放的 convex 域上诱发:(1) 标准平板的 Euclidean 连接的赫森方块,和(2) 双平的信息几何空间。我们首先审查这些构造,并演示如何在以下两个方面进行即时处理:(a) 其分区功能的完全正常的指数式家庭,(b) 其特性功能的正常同质锥体,以及(c) 其香农的内分光功能的混合式家庭。虽然这些结构可以明确地为前两个类别的许多常见例子而建立,但迄今尚未以封闭的形式知道具有不同规定的共享支持的密度成分的连续统计混合物的差质,从而迫使使用蒙特卡洛 取样在实践中采用混合物式组合式组合。我们在此工作中报告一个显著的例外: 被界定为两种指定和独特的Cauchy 分布的组合组合的混合物的混合物的组合。作为副产品,我们报告两种规定的两种规定的Cauch 的两种混合物的Jen-han-hann hann shn not 差异的封闭式公式。