概率聚类的广义Bayes框架

IF 2.4 2区 数学 Q2 BIOLOGY
Biometrika Pub Date : 2023-09-01 Epub Date: 2023-01-19 DOI:10.1093/biomet/asad004
Tommaso Rigon, Amy H Herring, David B Dunson
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引用次数: 0

摘要

基于损失的聚类方法,如k-means及其变体,是在数据中查找组的标准工具。然而,缺乏对估计聚类不确定性的量化是一个缺点。基于混合模型的基于模型的聚类提供了一种替代方法,但这种方法存在计算问题,并且对核的选择非常敏感。本文提出了一个广义贝叶斯框架,通过使用吉布斯后验在这些范式之间架起桥梁。在进行贝叶斯更新时,用损失函数代替对数似然进行聚类,从而产生了丰富的聚类方法。吉布斯后验代表了贝叶斯信念的连贯更新,而不需要指定数据的可能性,并且可以用于描述聚类中的不确定性。我们考虑了基于Bregman散度和成对相似度的损失,并开发了高效的确定性点估计算法以及用于不确定性量化的采样算法。现有的几种聚类算法,包括k-means,在我们的框架下可以被解释为广义贝叶斯估计,因此我们为这些方法提供了一种不确定性量化的方法;例如,允许计算数据点聚类良好的概率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A generalized Bayes framework for probabilistic clustering.

Loss-based clustering methods, such as k-means clustering and its variants, are standard tools for finding groups in data. However, the lack of quantification of uncertainty in the estimated clusters is a disadvantage. Model-based clustering based on mixture models provides an alternative approach, but such methods face computational problems and are highly sensitive to the choice of kernel. In this article we propose a generalized Bayes framework that bridges between these paradigms through the use of Gibbs posteriors. In conducting Bayesian updating, the loglikelihood is replaced by a loss function for clustering, leading to a rich family of clustering methods. The Gibbs posterior represents a coherent updating of Bayesian beliefs without needing to specify a likelihood for the data, and can be used for characterizing uncertainty in clustering. We consider losses based on Bregman divergence and pairwise similarities, and develop efficient deterministic algorithms for point estimation along with sampling algorithms for uncertainty quantification. Several existing clustering algorithms, including k-means, can be interpreted as generalized Bayes estimators in our framework, and thus we provide a method of uncertainty quantification for these approaches, allowing, for example, calculation of the probability that a data point is well clustered.

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来源期刊
Biometrika
Biometrika 生物-生物学
CiteScore
5.50
自引率
3.70%
发文量
56
审稿时长
6-12 weeks
期刊介绍: Biometrika is primarily a journal of statistics in which emphasis is placed on papers containing original theoretical contributions of direct or potential value in applications. From time to time, papers in bordering fields are also published.
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