动态混合比模型

Marko Ruman, M. Kárný
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引用次数: 3

摘要

概率密度与指数族分量的有限混合可以作为高维系统的柔性参数模型。然而,除了一些特殊的例外,这些动态模型假定混合组件的权重与数据无关。它们的使用是不合逻辑的,并且限制了建模的适用性。对条件反射(基本的学习操作)的密切性的要求导致了一类新的模型:混合比率。本文证明了它们的合理性,并展示了它们模拟真正动态系统的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Mixture Ratio Model
Finite mixtures of probability densities with components from exponential family serve as flexible parametric models of high-dimensional systems. However, with a few specialized exceptions, these dynamic models assume data-independent weights of mixture components. Their use is illogical and restricts the modeling applicability. The requirement for closeness with respect to conditioning, the basic learning operation, leads to a novel class of models: the mixture ratios. The paper justified them and shows their ability to model truly dynamic systems.
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