We consider the asymptotic properties of Bayesian functional linear regression models where the response is a scalar and the predictor is a random function. Functional linear regression models have been routinely applied to many functional data analytic tasks in practice, and recent developments have been made in theory and methods. However, few works have investigated the frequentist convergence property of the posterior distribution of the Bayesian functional linear regression model. In this paper, we attempt to conduct a theoretical study to understand the posterior contraction rate in the Bayesian functional linear regression. It is shown that an appropriately chosen prior leads to the minimax rate in prediction risk.15 page(s
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Empirical Bayes procedures are commonly used based on the supposed asymptotic equivalence with fully...
We derive rates of contraction of posterior distributions on nonparametric or semiparametric models ...
AbstractThis paper investigates the rate of convergence of estimating the regression weight function...
We consider the asymptotic properties of Bayesian functional linear regression models where the resp...
We study posterior contraction rates for a class of deep Gaussian process priors applied to the nonp...
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
This paper introduces a new approach to the study of rates of convergence for posterior distribution...
We apply the Bayes approach to the problem of projection estimation of a signal observed in the Gaus...
The problem of estimating the conditional mean function in a nonparametric regression model is one o...
Consider a Bayesian analysis of a parameter vector, [theta], based on n i.i.d. multivariate measurem...
We study the asymptotic behavior of posterior distributions for i.i.d. data. We present general post...
This paper analyzes Bayesian estimation of functional parameters in econometric models that are char...
We use rescaled Gaussian processes as prior models for functional parameters in nonparametric statis...
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We derive rates of contraction of posterior distributions on nonparametric or semiparametric models ...
AbstractThis paper investigates the rate of convergence of estimating the regression weight function...