配对多变量时间序列的贝叶斯时间对齐因子分析。

IF 4.3 3区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS
Journal of Machine Learning Research Pub Date : 2021-01-01
Arkaprava Roy, Jana Schaich Borg, David B Dunson
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引用次数: 0

摘要

许多现代数据集需要推理方法,可以估计随时间变化的矩阵集合中可变性的共享和个体特定组成部分。已经开发出了在静态情况下分析这些类型数据的有前途的方法,但只有少数方法可用于动态设置。为了解决这一差距,我们考虑了矩阵对的新模型和推理方法,其中列对应于不同时间点的多变量观测。为了描述共同和个体特征,我们提出了一个贝叶斯动态因子建模框架,称为时间对齐的共同和个体因子分析(TACIFA),该框架通过未知的扭曲函数包含时间对齐的不确定性。我们为提出的模型提供了理论支持,显示了可识别性和后验浓度。该结构通过哈密顿蒙特卡罗(HMC)算法实现了高效的计算。我们在仿真中显示了良好的性能,并通过应用于社会模仿实验来说明该方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Bayesian time-aligned factor analysis of paired multivariate time series.

Bayesian time-aligned factor analysis of paired multivariate time series.

Bayesian time-aligned factor analysis of paired multivariate time series.

Bayesian time-aligned factor analysis of paired multivariate time series.

Many modern data sets require inference methods that can estimate the shared and individual-specific components of variability in collections of matrices that change over time. Promising methods have been developed to analyze these types of data in static cases, but only a few approaches are available for dynamic settings. To address this gap, we consider novel models and inference methods for pairs of matrices in which the columns correspond to multivariate observations at different time points. In order to characterize common and individual features, we propose a Bayesian dynamic factor modeling framework called Time Aligned Common and Individual Factor Analysis (TACIFA) that includes uncertainty in time alignment through an unknown warping function. We provide theoretical support for the proposed model, showing identifiability and posterior concentration. The structure enables efficient computation through a Hamiltonian Monte Carlo (HMC) algorithm. We show excellent performance in simulations, and illustrate the method through application to a social mimicry experiment.

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来源期刊
Journal of Machine Learning Research
Journal of Machine Learning Research 工程技术-计算机:人工智能
CiteScore
18.80
自引率
0.00%
发文量
2
审稿时长
3 months
期刊介绍: The Journal of Machine Learning Research (JMLR) provides an international forum for the electronic and paper publication of high-quality scholarly articles in all areas of machine learning. All published papers are freely available online. JMLR has a commitment to rigorous yet rapid reviewing. JMLR seeks previously unpublished papers on machine learning that contain: new principled algorithms with sound empirical validation, and with justification of theoretical, psychological, or biological nature; experimental and/or theoretical studies yielding new insight into the design and behavior of learning in intelligent systems; accounts of applications of existing techniques that shed light on the strengths and weaknesses of the methods; formalization of new learning tasks (e.g., in the context of new applications) and of methods for assessing performance on those tasks; development of new analytical frameworks that advance theoretical studies of practical learning methods; computational models of data from natural learning systems at the behavioral or neural level; or extremely well-written surveys of existing work.
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