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Nonparametric Goodness of Fit via Cross-Validation Bayes Factors

Authors
Hart, Jeffrey D.Choi, Taeryon
Issue Date
Sep-2017
Publisher
INT SOC BAYESIAN ANALYSIS
Keywords
bandwidth selection; Bayes factor; consistency; cross validation; goodness-of-fit tests; kernel density estimates
Citation
BAYESIAN ANALYSIS, v.12, no.3, pp.653 - 677
Indexed
SCIE
SCOPUS
Journal Title
BAYESIAN ANALYSIS
Volume
12
Number
3
Start Page
653
End Page
677
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/82423
DOI
10.1214/16-BA1018
ISSN
1936-0975
Abstract
A nonparametric Bayes procedure is proposed for testing the fit of a parametric model for a distribution. Alternatives to the parametric model are kernel density estimates. Data splitting makes it possible to use kernel estimates for this purpose in a Bayesian setting. A kernel estimate indexed by bandwidth is computed from one part of the data, a training set, and then used as a model for the rest of the data, a validation set. A Bayes factor is calculated from the validation set by comparing the marginal for the kernel model with the marginal for the parametric model of interest. A simulation study is used to investigate how large the training set should be, and examples involving astronomy and wind data are provided. A proof of Bayes consistency of the proposed test is also provided.
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