We consider the problem of finding clusters in an unweighted graph, when the graph is partially observed. We analyze two programs, one which works for dense graphs and one which works for both sparse and dense graphs, but requires some a priori knowledge of the total cluster size, that are based on the convex optimization approach for low-rank matrix recovery using nuclear norm minimization. For the commonly used Stochastic Block Model, we obtain explicit bounds on the parameters of the problem (size and sparsity of clusters, the amount of observed data) and the regularization parameter characterize the success and failure of the programs. We corroborate our theoretical findings through extensive simulations. We also run our algorithm on a ...
There is a growing interest in taking advantage of possible patterns and structures in data so as to...
International audienceMining useful clusters from high dimensional data has received significant att...
Graph clustering is widely-studied unsupervised learning problem in which the task is to group simil...
We consider the problem of finding clusters in an unweighted graph, when the graph is partially obse...
This paper considers the problem of clustering a partially observed unweighted graph – i.e. one wher...
The problem of finding clusters in a graph arises in several applications such as social networks, d...
The problem of finding clusters in a graph arises in several ap-plications such as social networks, ...
This paper investigates graph clustering in the planted cluster model in the presence of small clust...
A wide range of applications in engineering as well as the natural and social sciences have datasets...
Graph clustering involves the task of partitioning nodes, so that the edge density is higher within ...
We study the problem of clustering a set of data points based on their similarity matrix, each entry...
We study the graph clustering problem where each observation (edge or no-edge between a pair of node...
Proceedings of the 28th International Conference on Machine Learning, ICML 20111001-100
In most theoretical studies on missing data analysis, data is typically assumed to be missing accord...
Submitted to the School of Electronic and Computer Engineering in partial fulfillment of the require...
There is a growing interest in taking advantage of possible patterns and structures in data so as to...
International audienceMining useful clusters from high dimensional data has received significant att...
Graph clustering is widely-studied unsupervised learning problem in which the task is to group simil...
We consider the problem of finding clusters in an unweighted graph, when the graph is partially obse...
This paper considers the problem of clustering a partially observed unweighted graph – i.e. one wher...
The problem of finding clusters in a graph arises in several applications such as social networks, d...
The problem of finding clusters in a graph arises in several ap-plications such as social networks, ...
This paper investigates graph clustering in the planted cluster model in the presence of small clust...
A wide range of applications in engineering as well as the natural and social sciences have datasets...
Graph clustering involves the task of partitioning nodes, so that the edge density is higher within ...
We study the problem of clustering a set of data points based on their similarity matrix, each entry...
We study the graph clustering problem where each observation (edge or no-edge between a pair of node...
Proceedings of the 28th International Conference on Machine Learning, ICML 20111001-100
In most theoretical studies on missing data analysis, data is typically assumed to be missing accord...
Submitted to the School of Electronic and Computer Engineering in partial fulfillment of the require...
There is a growing interest in taking advantage of possible patterns and structures in data so as to...
International audienceMining useful clusters from high dimensional data has received significant att...
Graph clustering is widely-studied unsupervised learning problem in which the task is to group simil...