A central problem in computational statistics is to convert a procedure for sampling combinatorial from an objects into a procedure for counting those objects, and vice versa. Weconsider sampling problems coming from *Gibbs distributions*, which are probability distributions of the form $\mu^\Omega_\beta(\omega) \propto e^{\beta H(\omega)}$ for $\beta$ in an interval $[\beta_\min, \beta_\max]$ and $H( \omega ) \in \{0 \} \cup [1, n]$. The *partition function* is the normalization factor $Z(\beta)=\sum_{\omega \in\Omega}e^{\beta H(\omega)}$. Two important parameters are the log partition ratio $q = \log \tfrac{Z(\beta_\max)}{Z(\beta_\min)}$ and the vector of counts $c_x = |H^{-1}(x)|$. Our first result is an algorithm to estimate the count...
This document is intended for computer scientists who would like to try out a Markov Chain Monte Car...
This paper discusses nonparametric estimation of the distribution of random coefficients in a struct...
Bayesian inference in state-space models is challenging due to high-dimensional state trajectories. ...
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 o...
We consider the problem of estimating the partition function Z(β)=∑xexp(−β(H(x)) of a Gibbs distribu...
Disordered systems such as spin glasses have been used extensively as models for high-dimensional ra...
Inference, along with estimation and decoding, are the three key operations one must be able to perf...
International audienceWe derive explicit bounds for the computation of normalizing constants Z for l...
Continuation of Fyodorov--Keating conjectures, connections with random multiplicative functions
Let $n\geq 1$ and $X_{n}$ be the random variable representing the size of the smallest component of ...
Consider the problem of testing $Z \sim \mathbb P^{\otimes m}$ vs $Z \sim \mathbb Q^{\otimes m}$ fro...
We introduce a methodology for performing approximate computations in very complex probabilistic sys...
We have a probabilistic statistical model which is required to adapt in the light of observed cases...
Probabilistic inference in many real-world problems requires graphical models with deterministic alg...
This document is intended for computer scientists who would like to try out a Markov Chain Monte Car...
This paper discusses nonparametric estimation of the distribution of random coefficients in a struct...
Bayesian inference in state-space models is challenging due to high-dimensional state trajectories. ...
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 o...
We consider the problem of estimating the partition function Z(β)=∑xexp(−β(H(x)) of a Gibbs distribu...
Disordered systems such as spin glasses have been used extensively as models for high-dimensional ra...
Inference, along with estimation and decoding, are the three key operations one must be able to perf...
International audienceWe derive explicit bounds for the computation of normalizing constants Z for l...
Continuation of Fyodorov--Keating conjectures, connections with random multiplicative functions
Let $n\geq 1$ and $X_{n}$ be the random variable representing the size of the smallest component of ...
Consider the problem of testing $Z \sim \mathbb P^{\otimes m}$ vs $Z \sim \mathbb Q^{\otimes m}$ fro...
We introduce a methodology for performing approximate computations in very complex probabilistic sys...
We have a probabilistic statistical model which is required to adapt in the light of observed cases...
Probabilistic inference in many real-world problems requires graphical models with deterministic alg...
This document is intended for computer scientists who would like to try out a Markov Chain Monte Car...
This paper discusses nonparametric estimation of the distribution of random coefficients in a struct...
Bayesian inference in state-space models is challenging due to high-dimensional state trajectories. ...