International audienceWe consider the problem of grouping items into clusters based on few random pairwise comparisons between the items. We introduce three closely related algorithms for this task: a belief propagation algorithm approximating the Bayes optimal solution, and two spectral algorithms based on the non-backtracking and Bethe Hessian operators. For the case of two symmetric clusters, we conjecture that these algorithms are asymptotically optimal in that they detect the clusters as soon as it is information theoretically possible to do so. We substantiate this claim for one of the spectral approaches we introduce
AbstractWe consider the problem of clustering a collection of elements based on pairwise judgments o...
We revisit recently proposed algorithms for probabilistic clustering with pair-wise constraints betw...
We revisit recently proposed algorithms for probabilistic clustering with pair-wise constraints betw...
International audienceWe consider the problem of grouping items into clusters based on few random pa...
International audienceWe consider the problem of grouping items into clusters based on few random pa...
International audienceWe consider the problem of grouping items into clusters based on few random pa...
International audienceWe consider the problem of grouping items into clusters based on few random pa...
International audienceWe consider the problem of grouping items into clusters based on few random pa...
International audienceWe consider the problem of clustering a finite set of items from pairwise simi...
We consider a pairwise comparisons model with n users and m items. Each user is shown a few pairs of...
We consider the problem of clustering a finite set of items from pairwise similarity information. Un...
A novel approach to clustering co-occurrence data poses it as an optimization problem in information...
Abstract. In this paper we develop an information-theoretic approach for pairwise clustering. The La...
Pairwise clustering methods partition the data space into clusters by the pairwise similarity betwee...
Pairwise clustering methods partition the data space into clusters by the pairwise similarity betwee...
AbstractWe consider the problem of clustering a collection of elements based on pairwise judgments o...
We revisit recently proposed algorithms for probabilistic clustering with pair-wise constraints betw...
We revisit recently proposed algorithms for probabilistic clustering with pair-wise constraints betw...
International audienceWe consider the problem of grouping items into clusters based on few random pa...
International audienceWe consider the problem of grouping items into clusters based on few random pa...
International audienceWe consider the problem of grouping items into clusters based on few random pa...
International audienceWe consider the problem of grouping items into clusters based on few random pa...
International audienceWe consider the problem of grouping items into clusters based on few random pa...
International audienceWe consider the problem of clustering a finite set of items from pairwise simi...
We consider a pairwise comparisons model with n users and m items. Each user is shown a few pairs of...
We consider the problem of clustering a finite set of items from pairwise similarity information. Un...
A novel approach to clustering co-occurrence data poses it as an optimization problem in information...
Abstract. In this paper we develop an information-theoretic approach for pairwise clustering. The La...
Pairwise clustering methods partition the data space into clusters by the pairwise similarity betwee...
Pairwise clustering methods partition the data space into clusters by the pairwise similarity betwee...
AbstractWe consider the problem of clustering a collection of elements based on pairwise judgments o...
We revisit recently proposed algorithms for probabilistic clustering with pair-wise constraints betw...
We revisit recently proposed algorithms for probabilistic clustering with pair-wise constraints betw...