We consider the problem of consistently estimating an unknown probability density function on a bounded interval from a sample of n independent and identically distributed univariate random variables. Adopting a Bayesian nonparametric approach, as first approximation, a hierarchical prior whose weak support comprises all absolutely continuous distribution functions, is considered that selects piecewise constant densities. The prior measure is constructed by putting a prior on the number of equal length bins and a Dirichtlet distribution on the bin values. Covergence rate for the Hellinger loss of the Bayes' estimator is deduced from the posterior rate, which is studied for various densities generating the data. This rate is comparable up to...
This dissertation focuses on the frequentist properties of Bayesian procedures in a broad spectrum o...
Alternatives to the Dirichlet prior for multinomial probabilities are explored. The Dirichlet prior ...
peer reviewedIn the Bayes paradigm and for a given loss function, we propose the construction of a n...
We consider the problem of consistently estimating an unknown probability density function on a boun...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
We consider nonparametric Bayesian estimation of a probability density p based on a random sample of...
We study the rate of convergence of posterior distributions in density estimation problems for log-d...
We study the rate of convergence of posterior distributions in density estimation problems for log-d...
Two theorems on the asymptotic distribution of a histogram density estimator based on randomly deter...
We propose a new estimation procedure of the conditional density for independent and identically dis...
Let p be an unknown and arbitrary probability distribution over [0, 1). We con-sider the problem of ...
Let p be an unknown and arbitrary probability distribution over [0, 1). We con-sider the problem of ...
We study the Bayesian approach to nonparametric function estimation problems such as nonparametric r...
A tractable nonparametric prior over densities is introduced which is closed under sampling and exhi...
We study the rates of convergence of the posterior distribution for Bayesian density estimation with...
This dissertation focuses on the frequentist properties of Bayesian procedures in a broad spectrum o...
Alternatives to the Dirichlet prior for multinomial probabilities are explored. The Dirichlet prior ...
peer reviewedIn the Bayes paradigm and for a given loss function, we propose the construction of a n...
We consider the problem of consistently estimating an unknown probability density function on a boun...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
We consider nonparametric Bayesian estimation of a probability density p based on a random sample of...
We study the rate of convergence of posterior distributions in density estimation problems for log-d...
We study the rate of convergence of posterior distributions in density estimation problems for log-d...
Two theorems on the asymptotic distribution of a histogram density estimator based on randomly deter...
We propose a new estimation procedure of the conditional density for independent and identically dis...
Let p be an unknown and arbitrary probability distribution over [0, 1). We con-sider the problem of ...
Let p be an unknown and arbitrary probability distribution over [0, 1). We con-sider the problem of ...
We study the Bayesian approach to nonparametric function estimation problems such as nonparametric r...
A tractable nonparametric prior over densities is introduced which is closed under sampling and exhi...
We study the rates of convergence of the posterior distribution for Bayesian density estimation with...
This dissertation focuses on the frequentist properties of Bayesian procedures in a broad spectrum o...
Alternatives to the Dirichlet prior for multinomial probabilities are explored. The Dirichlet prior ...
peer reviewedIn the Bayes paradigm and for a given loss function, we propose the construction of a n...