Bayesian Functional Principal Components Analysis via Variational Message Passing with Multilevel Extensions

IF 4.9 2区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Bayesian Analysis Pub Date : 2021-04-01 DOI:10.1214/23-ba1393
T. Nolan, J. Goldsmith, D. Ruppert
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引用次数: 3

Abstract

Functional principal components analysis is a popular tool for inference on functional data. Standard approaches rely on an eigendecomposition of a smoothed covariance surface in order to extract the orthonormal functions representing the major modes of variation. This approach can be a computationally intensive procedure, especially in the presence of large datasets with irregular observations. In this article, we develop a Bayesian approach, which aims to determine the Karhunen-Lo\`eve decomposition directly without the need to smooth and estimate a covariance surface. More specifically, we develop a variational Bayesian algorithm via message passing over a factor graph, which is more commonly referred to as variational message passing. Message passing algorithms are a powerful tool for compartmentalizing the algebra and coding required for inference in hierarchical statistical models. Recently, there has been much focus on formulating variational inference algorithms in the message passing framework because it removes the need for rederiving approximate posterior density functions if there is a change to the model. Instead, model changes are handled by changing specific computational units, known as fragments, within the factor graph. We extend the notion of variational message passing to functional principal components analysis. Indeed, this is the first article to address a functional data model via variational message passing. Our approach introduces two new fragments that are necessary for Bayesian functional principal components analysis. We present the computational details, a set of simulations for assessing accuracy and speed and an application to United States temperature data.
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基于多级扩展变分消息传递的贝叶斯函数主成分分析
功能主成分分析是对功能数据进行推理的常用工具。标准方法依赖于平滑协方差表面的本征分解,以便提取表示主要变化模式的正交函数。这种方法可能是一种计算密集型过程,尤其是在存在具有不规则观测的大型数据集的情况下。在本文中,我们开发了一种贝叶斯方法,旨在直接确定Karhunen-Loeve分解,而无需平滑和估计协方差表面。更具体地说,我们通过因子图上的消息传递开发了一种变分贝叶斯算法,这通常被称为变分消息传递。消息传递算法是一种强大的工具,用于划分层次统计模型中推理所需的代数和编码。最近,人们非常关注在消息传递框架中制定变分推理算法,因为如果模型发生变化,它就不需要重新推导近似后验密度函数。相反,模型变化是通过改变因子图中的特定计算单元(称为片段)来处理的。我们将变分信息传递的概念推广到函数主成分分析。事实上,这是第一篇通过变分消息传递来处理函数数据模型的文章。我们的方法引入了贝叶斯函数主成分分析所必需的两个新片段。我们介绍了计算细节,一组用于评估准确性和速度的模拟,以及对美国温度数据的应用。
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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来源期刊
Bayesian Analysis
Bayesian Analysis 数学-数学跨学科应用
CiteScore
6.50
自引率
13.60%
发文量
59
审稿时长
>12 weeks
期刊介绍: Bayesian Analysis is an electronic journal of the International Society for Bayesian Analysis. It seeks to publish a wide range of articles that demonstrate or discuss Bayesian methods in some theoretical or applied context. The journal welcomes submissions involving presentation of new computational and statistical methods; critical reviews and discussions of existing approaches; historical perspectives; description of important scientific or policy application areas; case studies; and methods for experimental design, data collection, data sharing, or data mining. Evaluation of submissions is based on importance of content and effectiveness of communication. Discussion papers are typically chosen by the Editor in Chief, or suggested by an Editor, among the regular submissions. In addition, the Journal encourages individual authors to submit manuscripts for consideration as discussion papers.
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