Paper submitted to Journal of Statistical PhysicsWe present a procedure to solve the inverse Ising problem, that is to find the interactions between a set of binary variables from the measure of their equilibrium correlations. The method consists in constructing and selecting specific clusters of variables, based on their contributions to the cross-entropy of the Ising model. Small contributions are discarded to avoid overfitting and to make the computation tractable. The properties of the cluster expansion and its performances on synthetic data are studied. To make the implementation easier we give the pseudo-code of the algorithm
International audienceWe investigate different ways of generating approximate solutions to the inver...
The dynamics of the non-equilibrium Ising model with parallel updates is investigated using a genera...
The inference of the couplings of an Ising model with given means and correlations is called the in...
AbstractThe inverse Ising problem consists of taking a set of Ising configurations generated with un...
Accepted for publication in Physical Review Letters (2011)We introduce a procedure to infer the inte...
We propose an algorithm to obtain numerically approximate solutions of the direct Ising problem, tha...
Inverse problems in statistical physics are motivated by the challenges of 'big data' in different f...
6 pages, 5 figuresInternational audienceIn this work we explain how to properly use mean-field metho...
Correlations between two variables of a high-dimensional system can be indicative of an underlying i...
Abstract. I consider the problem of deriving couplings of a statistical model from mea-sured correla...
In this paper, we solve the inverse problem for the cubic mean-field Ising model. Starting from conf...
Inferring modelling parameters of dynamical processes from observational data is an important invers...
In this paper we solve the inverse problem for the cubic mean-field Ising model. Starting from confi...
International audienceThere are many methods proposed for inferring parameters of the Ising model fr...
We study Ising chains with arbitrary multispin finite-range couplings, providing an explicit solutio...
International audienceWe investigate different ways of generating approximate solutions to the inver...
The dynamics of the non-equilibrium Ising model with parallel updates is investigated using a genera...
The inference of the couplings of an Ising model with given means and correlations is called the in...
AbstractThe inverse Ising problem consists of taking a set of Ising configurations generated with un...
Accepted for publication in Physical Review Letters (2011)We introduce a procedure to infer the inte...
We propose an algorithm to obtain numerically approximate solutions of the direct Ising problem, tha...
Inverse problems in statistical physics are motivated by the challenges of 'big data' in different f...
6 pages, 5 figuresInternational audienceIn this work we explain how to properly use mean-field metho...
Correlations between two variables of a high-dimensional system can be indicative of an underlying i...
Abstract. I consider the problem of deriving couplings of a statistical model from mea-sured correla...
In this paper, we solve the inverse problem for the cubic mean-field Ising model. Starting from conf...
Inferring modelling parameters of dynamical processes from observational data is an important invers...
In this paper we solve the inverse problem for the cubic mean-field Ising model. Starting from confi...
International audienceThere are many methods proposed for inferring parameters of the Ising model fr...
We study Ising chains with arbitrary multispin finite-range couplings, providing an explicit solutio...
International audienceWe investigate different ways of generating approximate solutions to the inver...
The dynamics of the non-equilibrium Ising model with parallel updates is investigated using a genera...
The inference of the couplings of an Ising model with given means and correlations is called the in...