Browsing by Author "Quintana, Fernando"
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- ItemA Product Partition Model With Regression on Covariates(AMER STATISTICAL ASSOC, 2011) Mueller, Peter; Quintana, Fernando; Rosner, Gary L.We propose a probability model for random partitions in the presence of covariates. In other words, we develop a model-based clustering algorithm that exploits available covariates. The motivating application is predicting time to progression for patients in a breast cancer trial. We proceed by reporting a weighted average of the responses of clusters of earlier patients. The weights should be determined by the similarity of the new patient's covariate with the covariates of patients in each cluster. We achieve the desired inference by defining a random partition model that includes a regression on covariates. Patients with similar covariates are a priori more likely to be clustered together. Posterior predictive inference in this model formalizes the desired prediction.
- ItemLinear mixed models with skew-elliptical distributions: A Bayesian approach(ELSEVIER SCIENCE BV, 2008) Jara, Alejandro; Quintana, Fernando; Martin, Ernesto SanNormality of random effects and error terms is a routine assumption for linear mixed models. However, such an assumption may be unrealistic, obscuring important features of within- and among-unit variation. A simple and robust Bayesian parametric approach that relaxes this assumption by using a multivariate skew-elliptical distribution, which includes the Skew-t, Skew-normal, t-Student, and Normal distributions as special cases and provides flexibility in capturing a broad range of non-normal and asymmetric behavior is presented. An appropriate posterior simulation scheme is developed and the methods are illustrated with an application to a longitudinal data example. (C) 2008 Elsevier B.V. All rights reserved.
- ItemRandom partition models with regression on covariates(ELSEVIER SCIENCE BV, 2010) Muellner, Peter; Quintana, FernandoMany recent applications of nonparametric Bayesian inference use random partition models, i.e. probability models for clustering a set of experimental units. We review the popular basic constructions. We then focus on an interesting extension of such models. In many applications covariates are available that could be used to a priori inform the clustering. This leads to random clustering models indexed by covariates, i.e., regression models with the outcome being a partition of the experimental units. We discuss some alternative approaches that have been used in the recent literature to implement such models, with an emphasis on a recently proposed extension of product partition models. Several of the reviewed approaches were not originally intended as covariate-based random partition models, but can be used for such inference. (C) 2010 Elsevier B.V. All rights reserved.