估计非参数回归半参数混合物的改进型 EM 算法

IF 1.6 2区 数学 Q2 COMPUTER SCIENCE, THEORY & METHODS Statistics and Computing Pub Date : 2024-05-29 DOI:10.1007/s11222-024-10435-3
Sphiwe B. Skhosana, Salomon M. Millard, Frans H. J. Kanfer
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引用次数: 0

摘要

非参数回归半参数高斯混合物(SPGMNRs)是线性回归高斯混合物(GMLRs)的灵活扩展。该模型假设成分回归函数(CRF)是协变量的非参数函数,而成分混合比例和方差是常数。遗憾的是,使用传统方法无法可靠地估计该模型。估计 CRF 的局部似然法要求我们最大化一组局部似然函数。使用期望最大化(EM)算法分别最大化每个局部似然函数可能会导致标签切换。这是因为在局部 E 步计算出的后验概率不能保证一致。这种标签切换的后果是 CRF 的估计值摇摆不定且不平滑。在本文中,我们提出了一种统一的方法来解决标签切换问题,并获得合理的估计值。我们提出的方法分为两个阶段。在第一阶段,我们提出了一种基于模型的方法来解决标签切换问题。我们首先指出,每个局部似然函数都是高斯混合模型(GMM)的似然函数。接下来,我们将 SPGMNRs 模型重新表述为这些 GMM 的混合物。最后,我们使用改进版的期望条件最大化(ECM)算法来估计 GMM 混合物。此外,利用局部 GMM 的混合权重,我们可以自动选择进行局部似然估计的局部点。在第二阶段,我们提出了参数和非参数项的一步反拟合估计。我们通过模拟数据和实际数据分析证明了所提方法的有效性。
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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A modified EM-type algorithm to estimate semi-parametric mixtures of non-parametric regressions

Semi-parametric Gaussian mixtures of non-parametric regressions (SPGMNRs) are a flexible extension of Gaussian mixtures of linear regressions (GMLRs). The model assumes that the component regression functions (CRFs) are non-parametric functions of the covariate(s) whereas the component mixing proportions and variances are constants. Unfortunately, the model cannot be reliably estimated using traditional methods. A local-likelihood approach for estimating the CRFs requires that we maximize a set of local-likelihood functions. Using the Expectation-Maximization (EM) algorithm to separately maximize each local-likelihood function may lead to label-switching. This is because the posterior probabilities calculated at the local E-step are not guaranteed to be aligned. The consequence of this label-switching is wiggly and non-smooth estimates of the CRFs. In this paper, we propose a unified approach to address label-switching and obtain sensible estimates. The proposed approach has two stages. In the first stage, we propose a model-based approach to address the label-switching problem. We first note that each local-likelihood function is a likelihood function of a Gaussian mixture model (GMM). Next, we reformulate the SPGMNRs model as a mixture of these GMMs. Lastly, using a modified version of the Expectation Conditional Maximization (ECM) algorithm, we estimate the mixture of GMMs. In addition, using the mixing weights of the local GMMs, we can automatically choose the local points where local-likelihood estimation takes place. In the second stage, we propose one-step backfitting estimates of the parametric and non-parametric terms. The effectiveness of the proposed approach is demonstrated on simulated data and real data analysis.

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来源期刊
Statistics and Computing
Statistics and Computing 数学-计算机:理论方法
CiteScore
3.20
自引率
4.50%
发文量
93
审稿时长
6-12 weeks
期刊介绍: Statistics and Computing is a bi-monthly refereed journal which publishes papers covering the range of the interface between the statistical and computing sciences. In particular, it addresses the use of statistical concepts in computing science, for example in machine learning, computer vision and data analytics, as well as the use of computers in data modelling, prediction and analysis. Specific topics which are covered include: techniques for evaluating analytically intractable problems such as bootstrap resampling, Markov chain Monte Carlo, sequential Monte Carlo, approximate Bayesian computation, search and optimization methods, stochastic simulation and Monte Carlo, graphics, computer environments, statistical approaches to software errors, information retrieval, machine learning, statistics of databases and database technology, huge data sets and big data analytics, computer algebra, graphical models, image processing, tomography, inverse problems and uncertainty quantification. In addition, the journal contains original research reports, authoritative review papers, discussed papers, and occasional special issues on particular topics or carrying proceedings of relevant conferences. Statistics and Computing also publishes book review and software review sections.
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