International audienceWe consider the problem of spectral clustering with partial supervision in the form of must-link and cannot-link constraints. Such pairwise constraints are common in problems like coreference resolution in natural language processing. The approach developed in this paper is to learn a new representation space for the data together with a dis-tance in this new space. The representation space is obtained through a constraint-driven linear transformation of a spectral embedding of the data. Constraints are expressed with a Gaussian function that locally reweights the similarities in the projected space. A global, non-convex optimization objective is then derived and the model is learned via gradi-ent descent techniques. O...
National audienceIn our data driven world, clustering is of major importance to help end-users and d...
Abstract—In many real-world applications we can model the data as a graph with each node being an in...
We present a simple spectral approach to the well-studied constrained clustering problem. It capture...
International audienceWe consider the problem of spectral clustering with partial supervision in the...
Abstract. We consider the problem of spectral clustering with partial supervision in the form of mus...
International audienceIn our data driven world, clustering is of major importance to help end-users ...
We propose a novel framework for constrained spectral clustering with pairwise constraints which spe...
Constrained spectral clustering is a semi-supervised learning problem that aims at incorporating use...
International audienceSpectral clustering methods meet more and more success in machine learning com...
Abstract Constrained clustering has been well-studied for algorithms such as K-means and hierarchica...
Abstract—While spectral clustering is usually an unsuper-vised operation, there are circumstances in...
Clustering performance can often be greatly improved by leveraging side information. In this paper, ...
Abstract—While spectral clustering is usually an unsuper-vised operation, there are circumstances in...
Finally, we study how to construct an appropriate graph for spectral clustering. Given a local simil...
We present a principled spectral approach to the well-studied constrained clustering problem. It red...
National audienceIn our data driven world, clustering is of major importance to help end-users and d...
Abstract—In many real-world applications we can model the data as a graph with each node being an in...
We present a simple spectral approach to the well-studied constrained clustering problem. It capture...
International audienceWe consider the problem of spectral clustering with partial supervision in the...
Abstract. We consider the problem of spectral clustering with partial supervision in the form of mus...
International audienceIn our data driven world, clustering is of major importance to help end-users ...
We propose a novel framework for constrained spectral clustering with pairwise constraints which spe...
Constrained spectral clustering is a semi-supervised learning problem that aims at incorporating use...
International audienceSpectral clustering methods meet more and more success in machine learning com...
Abstract Constrained clustering has been well-studied for algorithms such as K-means and hierarchica...
Abstract—While spectral clustering is usually an unsuper-vised operation, there are circumstances in...
Clustering performance can often be greatly improved by leveraging side information. In this paper, ...
Abstract—While spectral clustering is usually an unsuper-vised operation, there are circumstances in...
Finally, we study how to construct an appropriate graph for spectral clustering. Given a local simil...
We present a principled spectral approach to the well-studied constrained clustering problem. It red...
National audienceIn our data driven world, clustering is of major importance to help end-users and d...
Abstract—In many real-world applications we can model the data as a graph with each node being an in...
We present a simple spectral approach to the well-studied constrained clustering problem. It capture...