Posterior and predictive distributions for m future trials, given the first n elements of an infinite exchangeable sequence ξ˜1,ξ˜2,…, are considered in a nonparametric Bayesian setting. The former distribution is compared to the unit mass at the empirical distribution e˜n:=[formula parsented]∑i=1nδξ˜i of the n past observations, while the latter is compared to the m-fold product e˜nm. Comparisons are made by means of distinguished probability distances inducing topologies that are equivalent to (or finer than) the topology of weak convergence of probability measures. After stating almost sure convergence to zero of these distances as n goes to infinity, the paper focuses on the analysis of the rate of approach to zero, so providing a quant...
Random probability measures are a cornerstone of Bayesian nonparametrics. By virtue of de Finetti's ...
A predictive distribution over a sequence of N+1 events is said to be “frequency mimicking” whenever...
No abstract availableRandom vectors of measures are the main building block to a major portion of Ba...
This paper deals with suitable quantifications in approximating a probability measure by an “empiric...
Bayesian Statistics has been increasingly popular in the last five decades. Besides having decision ...
Exchangeability of observations corresponds to a condition shared by the vast majority of applicatio...
According to the Bayesian theory, observations are usually considered to be part of an infinite sequ...
This paper deals with empirical processes of the type Cn(B) = n^(1/2) {µn(B) - P(Xn+1 in B | X1, . ....
This paper deals with empirical processes of the type Cn(B)=n−−√{μn(B)−P(Xn+1∈B∣X1,…,Xn)}, where (Xn...
The prediction of future outcomes of a random phenomenon is typically based on a certain number of "...
This note points some ambiguities in the notation adopted in “Frequentistic approximations to Bayesi...
In Bayesian theory, observations are usually assumed to be part of an infinite sequence of random el...
According to the Bayesian theory, observations are usually considered to be part of an infinite sequ...
This paper contributes to the theory of Bayesian consistency for a sequence of posterior and predict...
The probability distribution of a sequence $X=(X_1,X_2,ldots)$ of random variables is determined by ...
Random probability measures are a cornerstone of Bayesian nonparametrics. By virtue of de Finetti's ...
A predictive distribution over a sequence of N+1 events is said to be “frequency mimicking” whenever...
No abstract availableRandom vectors of measures are the main building block to a major portion of Ba...
This paper deals with suitable quantifications in approximating a probability measure by an “empiric...
Bayesian Statistics has been increasingly popular in the last five decades. Besides having decision ...
Exchangeability of observations corresponds to a condition shared by the vast majority of applicatio...
According to the Bayesian theory, observations are usually considered to be part of an infinite sequ...
This paper deals with empirical processes of the type Cn(B) = n^(1/2) {µn(B) - P(Xn+1 in B | X1, . ....
This paper deals with empirical processes of the type Cn(B)=n−−√{μn(B)−P(Xn+1∈B∣X1,…,Xn)}, where (Xn...
The prediction of future outcomes of a random phenomenon is typically based on a certain number of "...
This note points some ambiguities in the notation adopted in “Frequentistic approximations to Bayesi...
In Bayesian theory, observations are usually assumed to be part of an infinite sequence of random el...
According to the Bayesian theory, observations are usually considered to be part of an infinite sequ...
This paper contributes to the theory of Bayesian consistency for a sequence of posterior and predict...
The probability distribution of a sequence $X=(X_1,X_2,ldots)$ of random variables is determined by ...
Random probability measures are a cornerstone of Bayesian nonparametrics. By virtue of de Finetti's ...
A predictive distribution over a sequence of N+1 events is said to be “frequency mimicking” whenever...
No abstract availableRandom vectors of measures are the main building block to a major portion of Ba...