Introduction to Finite Mixtures

P. Green
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引用次数: 4

Abstract

Mixture models have been around for over 150 years, as an intuitively simple and practical tool for enriching the collection of probability distributions available for modelling data. In this chapter we describe the basic ideas of the subject, present several alternative representations and perspectives on these models, and discuss some of the elements of inference about the unknowns in the models. Our focus is on the simplest set-up, of finite mixture models, but we discuss also how various simplifying assumptions can be relaxed to generate the rich landscape of modelling and inference ideas traversed in the rest of this book.
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有限混合概论
混合模型已经存在了150多年,作为一种直观简单实用的工具,它丰富了可用于建模数据的概率分布集合。在本章中,我们描述了该主题的基本思想,提出了这些模型的几种替代表示和观点,并讨论了模型中未知因素的一些推断要素。我们的重点是最简单的设置,有限的混合模型,但我们也讨论了各种简化的假设如何可以放松,以产生丰富的景观建模和推理思想贯穿本书的其余部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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