We consider the quality of learning a response function by a nonparametric Bayesian approach using a Gaussian process (GP) prior on the response function. We upper bound the quadratic risk of the learning procedure, which in turn is an upper bound on the Kullback-Leibler information between the predictive and true data distribution. The upper bound is expressed in small ball probabilities and concentration measures of the GP prior. We illustrate the computation of the upper bound for the Matérn and squared exponential kernels. For these priors the risk, and hence the information criterion, tends to zero for all continuous response functions. However, the rate at which this happens depends on the combination of true response function and Gau...
We give a basic introduction to Gaussian Process regression models. We focus on understanding the ro...
84 pagesGaussian processes are powerful Bayesian non-parametric models used for their closed-form po...
grantor: University of TorontoThis thesis develops two Bayesian learning methods relying o...
We consider the quality of learning a response function by a nonparametric Bayesian approach using a...
AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. ...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
We derive expressions for the predicitive information rate (PIR) for the class of autoregressive Gau...
In this note, we present additional material for the IEEE Transactions on Informa-tion Theory corres...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
We use rescaled Gaussian processes as prior models for functional parameters in nonparametric statis...
We derive rates of contraction of posterior distributions on nonparametric or semiparametric models ...
Consider binary observations whose response probability is an unknown smooth function of a set of co...
We study the Bayesian approach to nonparametric function estimation problems such as nonparametric r...
We give a basic introduction to Gaussian Process regression models. We focus on understanding the ro...
84 pagesGaussian processes are powerful Bayesian non-parametric models used for their closed-form po...
grantor: University of TorontoThis thesis develops two Bayesian learning methods relying o...
We consider the quality of learning a response function by a nonparametric Bayesian approach using a...
AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. ...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
We present a competitive analysis of some non-parametric Bayesian algorithms in a worst-case online ...
Gaussian process models constitute a class of probabilistic statistical models in which a Gaussian p...
We derive expressions for the predicitive information rate (PIR) for the class of autoregressive Gau...
In this note, we present additional material for the IEEE Transactions on Informa-tion Theory corres...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
We use rescaled Gaussian processes as prior models for functional parameters in nonparametric statis...
We derive rates of contraction of posterior distributions on nonparametric or semiparametric models ...
Consider binary observations whose response probability is an unknown smooth function of a set of co...
We study the Bayesian approach to nonparametric function estimation problems such as nonparametric r...
We give a basic introduction to Gaussian Process regression models. We focus on understanding the ro...
84 pagesGaussian processes are powerful Bayesian non-parametric models used for their closed-form po...
grantor: University of TorontoThis thesis develops two Bayesian learning methods relying o...