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Tropical geometry of statistical models.

机译:统计模型的热带几何。

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This article presents a unified mathematical framework for inference in graphical models, building on the observation that graphical models are algebraic varieties. From this geometric viewpoint, observations generated from a model are coordinates of a point in the variety, and the sum-product algorithm is an efficient tool for evaluating specific coordinates. Here, we address the question of how the solutions to various inference problems depend on the model parameters. The proposed answer is expressed in terms of tropical algebraic geometry. The Newton polytope of a statistical model plays a key role. Our results are applied to the hidden Markov model and the general Markov model on a binary tree.
机译:本文基于图形模型是代数形式的观察结果,提出了用于图形模型推论的统一数学框架。从这种几何角度来看,从模型生成的观测值是该物种中某个点的坐标,并且求和积算法是评估特定坐标的有效工具。在这里,我们解决了各种推理问题的解决方案如何取决于模型参数的问题。提出的答案用热带代数几何表达。统计模型的牛顿多态性起关键作用。我们的结果被应用于二叉树上的隐马尔可夫模型和通用马尔可夫模型。

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