Adaptive nonparametric Bayesian inference using location-scale mixture priors
classification
🧮 math.ST
stat.TH
keywords
mixtureconstructedgaussiankernellocation-scalenonparametricpriorpriors
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We study location-scale mixture priors for nonparametric statistical problems, including multivariate regression, density estimation and classification. We show that a rate-adaptive procedure can be obtained if the prior is properly constructed. In particular, we show that adaptation is achieved if a kernel mixture prior on a regression function is constructed using a Gaussian kernel, an inverse gamma bandwidth, and Gaussian mixing weights.
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