Literature DB >> 25382958

Sparsity Inducing Prior Distributions for Correlation Matrices of Longitudinal Data.

J T Gaskins1, M J Daniels2, B H Marcus3.   

Abstract

For longitudinal data, the modeling of a correlation matrix R can be a difficult statistical task due to both the positive definite and the unit diagonal constraints. Because the number of parameters increases quadratically in the dimension, it is often useful to consider a sparse parameterization. We introduce a pair of prior distributions on the set of correlation matrices for longitudinal data through the partial autocorrelations (PACs), each of which vary independently over [-1,1]. The first prior shrinks each of the PACs toward zero with increasingly aggressive shrinkage in lag. The second prior (a selection prior) is a mixture of a zero point mass and a continuous component for each PAC, allowing for a sparse representation. The structure implied under our priors is readily interpretable for time-ordered responses because each zero PAC implies a conditional independence relationship in the distribution of the data. Selection priors on the PACs provide a computationally attractive alternative to selection on the elements of R or R-1 for ordered data. These priors allow for data-dependent shrinkage/selection under an intuitive parameterization in an unconstrained setting. The proposed priors are compared to standard methods through a simulation study and a multivariate probit data example. Supplemental materials for this article (appendix, data, and R code) are available online.

Entities:  

Keywords:  Bayesian methods; Correlation matrix; Longitudinal data; Multivariate probit; Partial autocorrelation; Selection priors; Shrinkage

Year:  2014        PMID: 25382958      PMCID: PMC4217169          DOI: 10.1080/10618600.2013.852553

Source DB:  PubMed          Journal:  J Comput Graph Stat        ISSN: 1061-8600            Impact factor:   2.302


  6 in total

1.  Longitudinal profiling of health care units based on continuous and discrete patient outcomes.

Authors:  Michael J Daniels; Sharon-Lise T Normand
Journal:  Biostatistics       Date:  2005-05-25       Impact factor: 5.899

2.  A note on MAR, identifying restrictions, model comparison, and sensitivity analysis in pattern mixture models with and without covariates for incomplete data.

Authors:  Chenguang Wang; Michael J Daniels
Journal:  Biometrics       Date:  2011-03-01       Impact factor: 2.571

3.  The efficacy of exercise as an aid for smoking cessation in women: a randomized controlled trial.

Authors:  B H Marcus; A E Albrecht; T K King; A F Parisi; B M Pinto; M Roberts; R S Niaura; D B Abrams
Journal:  Arch Intern Med       Date:  1999-06-14

4.  Joint Models for the Association of Longitudinal Binary and Continuous Processes With Application to a Smoking Cessation Trial.

Authors:  Xuefeng Liu; Michael J Daniels; Bess Marcus
Journal:  J Am Stat Assoc       Date:  2009-06-01       Impact factor: 5.033

5.  Bayesian modeling of the dependence in longitudinal data via partial autocorrelations and marginal variances.

Authors:  Y Wang; M J Daniels
Journal:  J Multivar Anal       Date:  2013-04-01       Impact factor: 1.473

6.  Modeling Covariance Matrices via Partial Autocorrelations.

Authors:  M J Daniels; M Pourahmadi
Journal:  J Multivar Anal       Date:  2009-11-01       Impact factor: 1.473

  6 in total
  1 in total

1.  Simple Penalties on Maximum-Likelihood Estimates of Genetic Parameters to Reduce Sampling Variation.

Authors:  Karin Meyer
Journal:  Genetics       Date:  2016-06-17       Impact factor: 4.562

  1 in total

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