We consider the problem of estimating the partition function Z(β)=∑xexp(−β(H(x)) of a Gibbs distribution with a Hamilton H(⋅), or more precisely the logarithm of the ratio q=lnZ(0)/Z(β). It has been recently shown how to approximate q with high probability assuming the existence of an oracle that produces samples from the Gibbs distribution for a given parameter value in [0,β]. The current best known approach due to Huber [9] uses O(qlnn⋅[lnq+lnlnn+ε−2]) oracle calls on average where ε is the desired accuracy of approximation and H(⋅) is assumed to lie in {0}∪[1,n]. We improve the complexity to O(qlnn⋅ε−2) oracle calls. We also show that the same complexity can be achieved if exact oracles are replaced with approximate sampling oracles that...
Gibbs measures induced by random factor graphs play a prominent role in computer science, combinator...
We consider the problem of approximating the entropy of a discrete distribution under several models...
The Gumbel trick is a method to sample from a discrete probability distribution, or to estimate its ...
We consider the problem of estimating the partition function Z(β)=∑xexp(−β(H(x)) of a Gibbs distribu...
A central problem in computational statistics is to convert a procedure for sampling combinatorial o...
We consider \emph{Gibbs distributions}, which are families of probability distributions over a discr...
A central problem in computational statistics is to convert a procedure for sampling combinatorial f...
Graphical Models are used to represent structural information on a high-dimensional joint probabilit...
International audienceFor a graph G , let Z(G,λ)Z(G,λ) be the partition function of the monomer–dim...
In this paper we describe how MAP inference can be used to sample efficiently from Gibbs distributio...
We present a new method for calculating approximate marginals for probability distributions defined...
In this paper we describe how MAP inference can be used to sample efficiently from Gibbs distributio...
Abstract: We prove an exponential approximation for the law of approximate occur-rence of typical pa...
© 2020 IEEE. We establish the average-case hardness of the algorithmic problem of exactly computing ...
The Gumbel trick is a method to sample from a discrete probability distribution, or to estimate its ...
Gibbs measures induced by random factor graphs play a prominent role in computer science, combinator...
We consider the problem of approximating the entropy of a discrete distribution under several models...
The Gumbel trick is a method to sample from a discrete probability distribution, or to estimate its ...
We consider the problem of estimating the partition function Z(β)=∑xexp(−β(H(x)) of a Gibbs distribu...
A central problem in computational statistics is to convert a procedure for sampling combinatorial o...
We consider \emph{Gibbs distributions}, which are families of probability distributions over a discr...
A central problem in computational statistics is to convert a procedure for sampling combinatorial f...
Graphical Models are used to represent structural information on a high-dimensional joint probabilit...
International audienceFor a graph G , let Z(G,λ)Z(G,λ) be the partition function of the monomer–dim...
In this paper we describe how MAP inference can be used to sample efficiently from Gibbs distributio...
We present a new method for calculating approximate marginals for probability distributions defined...
In this paper we describe how MAP inference can be used to sample efficiently from Gibbs distributio...
Abstract: We prove an exponential approximation for the law of approximate occur-rence of typical pa...
© 2020 IEEE. We establish the average-case hardness of the algorithmic problem of exactly computing ...
The Gumbel trick is a method to sample from a discrete probability distribution, or to estimate its ...
Gibbs measures induced by random factor graphs play a prominent role in computer science, combinator...
We consider the problem of approximating the entropy of a discrete distribution under several models...
The Gumbel trick is a method to sample from a discrete probability distribution, or to estimate its ...