We consider the problem of estimating a probability distribution that maximizes the entropy while satisfying a finite number of moment constraints, possibly corrupted by noise. Based on duality of convex programming, we present a novel approximation scheme using a smoothed fast gradient method that is equipped with explicit bounds on the approximation error. We further demonstrate how the presented scheme can be used for approximating the chemical master equation through the zero-information moment closure method, and for an approximate dynamic programming approach in the context of constrained Markov decision processes with uncountable state and action spaces.Team DeSchutte
International audienceIn this paper, we study entropy maximisation problems in order to reconstruct ...
AbstractWe consider the linear inverse problem of reconstructing an unknown finite measure μ from a ...
We present a systematic study of the reconstruction of non-negative functions via maximum entropy ap...
We consider the problem of estimating a probability distribution that maximizes the entropy while sa...
We consider the problem of estimating a probability distribution that maximizes the entropy while sa...
16 pagesWe tackle the inverse problem of reconstructing an unknown finite measure $\mu$ from a noisy...
The maximum entropy principle is a powerful tool for solving underdetermined inverse problems. This ...
The recovering of a discrete probability distribution taking on a countable values, when only partia...
Traditionally, the Method of (Shannon-Kullback's) Relative Entropy Maximization (REM) is considered ...
Abstract. We consider the problem of estimating an unknown probability distribution from samples usi...
This article revisits the maximum entropy algorithm in the context of recovering the probability dis...
International audienceWe consider the linear inverse problem of reconstructing an unknown finite mea...
Maximum entropy spectral density estimation is a technique for reconstructing an unknown density fun...
In many practical situations, we have only partial information about the probabilities. In some case...
We study a parametric estimation problem related to moment condition models. As an alternative to th...
International audienceIn this paper, we study entropy maximisation problems in order to reconstruct ...
AbstractWe consider the linear inverse problem of reconstructing an unknown finite measure μ from a ...
We present a systematic study of the reconstruction of non-negative functions via maximum entropy ap...
We consider the problem of estimating a probability distribution that maximizes the entropy while sa...
We consider the problem of estimating a probability distribution that maximizes the entropy while sa...
16 pagesWe tackle the inverse problem of reconstructing an unknown finite measure $\mu$ from a noisy...
The maximum entropy principle is a powerful tool for solving underdetermined inverse problems. This ...
The recovering of a discrete probability distribution taking on a countable values, when only partia...
Traditionally, the Method of (Shannon-Kullback's) Relative Entropy Maximization (REM) is considered ...
Abstract. We consider the problem of estimating an unknown probability distribution from samples usi...
This article revisits the maximum entropy algorithm in the context of recovering the probability dis...
International audienceWe consider the linear inverse problem of reconstructing an unknown finite mea...
Maximum entropy spectral density estimation is a technique for reconstructing an unknown density fun...
In many practical situations, we have only partial information about the probabilities. In some case...
We study a parametric estimation problem related to moment condition models. As an alternative to th...
International audienceIn this paper, we study entropy maximisation problems in order to reconstruct ...
AbstractWe consider the linear inverse problem of reconstructing an unknown finite measure μ from a ...
We present a systematic study of the reconstruction of non-negative functions via maximum entropy ap...