Title of article
Nonparametric Bayes classification and hypothesis testing on manifolds
Author/Authors
Bhattacharya، نويسنده , , Abhishek and Dunson، نويسنده , , David، نويسنده ,
Issue Information
دوفصلنامه با شماره پیاپی سال 2012
Pages
19
From page
1
To page
19
Abstract
Our first focus is prediction of a categorical response variable using features that lie on a general manifold. For example, the manifold may correspond to the surface of a hypersphere. We propose a general kernel mixture model for the joint distribution of the response and predictors, with the kernel expressed in product form and dependence induced through the unknown mixing measure. We provide simple sufficient conditions for large support and weak and strong posterior consistency in estimating both the joint distribution of the response and predictors and the conditional distribution of the response. Focusing on a Dirichlet process prior for the mixing measure, these conditions hold using von Mises–Fisher kernels when the manifold is the unit hypersphere. In this case, Bayesian methods are developed for efficient posterior computation using slice sampling. Next we develop Bayesian nonparametric methods for testing whether there is a difference in distributions between groups of observations on the manifold having unknown densities. We prove consistency of the Bayes factor and develop efficient computational methods for its calculation. The proposed classification and testing methods are evaluated using simulation examples and applied to spherical data applications.
Keywords
Classification , Dirichlet process mixture , Bayes factor , Flexible prior , Non-Euclidean manifold , Nonparametric Bayes , Hypothesis testing , posterior consistency , Spherical data
Journal title
Journal of Multivariate Analysis
Serial Year
2012
Journal title
Journal of Multivariate Analysis
Record number
1565867
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