JOURNAL ARTICLE

Bayesian nonparametric covariance regression

Emily B. FoxDavid B. Dunson

Year: 2015 Journal:   Journal of Machine Learning Research Vol: 16 (1)Pages: 2501-2542   Publisher: The MIT Press

Abstract

Capturing predictor-dependent correlations amongst the elements of a multivariate response vector is fundamental to numerous applied domains, including neuroscience, epidemiology, and finance. Although there is a rich literature on methods for allowing the variance in a univariate regression model to vary with predictors, relatively little has been done in the multivariate case. As a motivating example, we consider the Google Flu Trends data set, which provides indirect measurements of influenza incidence at a large set of locations over time (our predictor). To accurately characterize temporally evolving influenza incidence across regions, it is important to develop statistical methods for a time-varying covariance matrix. Importantly, the locations provide a redundant set of measurements and do not yield a sparse nor static spatial dependence structure. We propose to reduce dimensionality and induce a flexible Bayesian nonparametric covariance regression model by relating these location-specific trajectories to a lower-dimensional subspace through a latent factor model with predictor-dependent factor loadings. These loadings are in terms of a collection of basis functions that vary nonparametrically over the predictor space. Such low-rank approximations are in contrast to sparse precision assumptions, and are appropriate in a wide range of applications. Our formulation aims to address three challenges: scaling to large p domains, coping with missing values, and allowing an irregular grid of observations. The model is shown to be highly exible, while leading to a computationally feasible implementation via Gibbs sampling. The ability to scale to large p domains and cope with missing values is fundamental in analyzing the Google Flu Trends data.

Keywords:
Univariate Covariance Multivariate statistics Curse of dimensionality Missing data Bayesian probability Collinearity Nonparametric statistics Computer science Statistics Gibbs sampling Mathematics Covariance matrix Data mining Econometrics

Metrics

83
Cited By
3.36
FWCI (Field Weighted Citation Impact)
48
Refs
0.94
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

COVID-19 epidemiological studies
Physical Sciences →  Mathematics →  Modeling and Simulation
Data-Driven Disease Surveillance
Health Sciences →  Medicine →  Epidemiology
Bayesian Methods and Mixture Models
Physical Sciences →  Computer Science →  Artificial Intelligence

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