Inferring the value of a property of a large stochastic system is a difficult task when the number of samples is insufficient to reliably estimate the probability distribution. The Bayesian estimator of the property of interest requires the knowledge of the prior distribution, and in many situations, it is not clear which prior should be used. Several estimators have been developed so far in which the proposed prior us individually tailored for each property of interest; such is the case, for example, for the entropy, the amount of mutual information, or the correlation between pairs of variables. In this paper, we propose a general framework to select priors that is valid for arbitrary properties. We first demonstrate that only certain asp...
The Principle of Maximum Entropy is often used to update probabilities due to evidence instead of pe...
In this thesis we start by providing some detail regarding how we arrived at our present understandi...
Some problems occurring in Expert Systems can be resolved by employing a causal (Bayesian) network a...
Learning from model diagnostics that a prior distribution must be replaced by one that conflicts les...
This paper is a review of a particular approach to the method of maximum entropy as a general framew...
We consider Bayesian estimation of information-theoretic quantities from data, using a Dirichlet pr...
In Bayesian statistics, if the distribution of the data is unknown, then each plausible distribution...
Markov chains are a natural and well understood tool for describing one-dimensional patterns in time...
We study properties of popular near–uniform (Dirichlet) priors for learning undersampled probability...
e case of location and scale parameters, rate constants, and in Bernoulli trials with unknown probab...
In the Bayesian framework, the usual choice of prior in the prediction of homogeneous Poisson proces...
This paper describes a method for learning the joint probability distribution of a set of variables ...
Abstract—We present an exact Bayesian treatment of a simple, yet sufficiently general probability di...
In Bayesian analysis of dynamic stochastic general equilibrium (DSGE) prior distributions for some o...
Maximum entropy is a powerful concept that entails a sharp separation between relevant and irrelevan...
The Principle of Maximum Entropy is often used to update probabilities due to evidence instead of pe...
In this thesis we start by providing some detail regarding how we arrived at our present understandi...
Some problems occurring in Expert Systems can be resolved by employing a causal (Bayesian) network a...
Learning from model diagnostics that a prior distribution must be replaced by one that conflicts les...
This paper is a review of a particular approach to the method of maximum entropy as a general framew...
We consider Bayesian estimation of information-theoretic quantities from data, using a Dirichlet pr...
In Bayesian statistics, if the distribution of the data is unknown, then each plausible distribution...
Markov chains are a natural and well understood tool for describing one-dimensional patterns in time...
We study properties of popular near–uniform (Dirichlet) priors for learning undersampled probability...
e case of location and scale parameters, rate constants, and in Bernoulli trials with unknown probab...
In the Bayesian framework, the usual choice of prior in the prediction of homogeneous Poisson proces...
This paper describes a method for learning the joint probability distribution of a set of variables ...
Abstract—We present an exact Bayesian treatment of a simple, yet sufficiently general probability di...
In Bayesian analysis of dynamic stochastic general equilibrium (DSGE) prior distributions for some o...
Maximum entropy is a powerful concept that entails a sharp separation between relevant and irrelevan...
The Principle of Maximum Entropy is often used to update probabilities due to evidence instead of pe...
In this thesis we start by providing some detail regarding how we arrived at our present understandi...
Some problems occurring in Expert Systems can be resolved by employing a causal (Bayesian) network a...