We develop a non-convex optimization approach to correlation clustering using the Frank-Wolfe (FW) framework. We show that the basic approach leads to a simple and natural local search algorithm with guaranteed convergence. This algorithm already beats alternative algorithms by substantial margins in both running time and quality of the clustering. Using ideas from FW algorithms, we develop subsampling and variance reduction paradigms for this approach. This yields both a practical improvement of the algorithm and some interesting further directions to investigate. We demonstrate the performance on both synthetic and real world data sets
In the Correlation Clustering problem, we are given a graph with its edges labeled as ``similar" and...
Correlation clustering is a widely studied framework for clustering based on pairwise similarity and...
Abstract. We describe a new optimization scheme for finding high-quality clusterings in planar graph...
We develop a non-convex optimization approach to correlation clustering using the Frank-Wolfe (FW) f...
Clustering is one of an interesting data mining topics that can be applied in many fields. Recently...
Abstract. CorrelationClustering is now an established problem in the algorithms and constrained clus...
The problem of cluster analysis is formulated as a problem of non-smooth, non-convex optimization, a...
Abstract. Correlation clustering is the problem of finding a crisp par-tition of the vertices of a c...
AbstractWe consider the following general correlation-clustering problem [N. Bansal, A. Blum, S. Cha...
We study the problem of clustering a set of data points based on their similarity matrix, each entry...
Abstract Clustering is a fundamental tool for analyzing large data sets. A rich body of work has be...
Data clustering is a difficult problem due to the complex and heterogeneous natures of multidimensio...
Several clustering methods (e.g., Normalized Cut and Ratio Cut) divide the Min Cut cost function by ...
An algorithm is developed for solving clustering problems with the similarity measure defined using ...
Correlation clustering is the problem of finding a crisp partition of the vertices of a correlation ...
In the Correlation Clustering problem, we are given a graph with its edges labeled as ``similar" and...
Correlation clustering is a widely studied framework for clustering based on pairwise similarity and...
Abstract. We describe a new optimization scheme for finding high-quality clusterings in planar graph...
We develop a non-convex optimization approach to correlation clustering using the Frank-Wolfe (FW) f...
Clustering is one of an interesting data mining topics that can be applied in many fields. Recently...
Abstract. CorrelationClustering is now an established problem in the algorithms and constrained clus...
The problem of cluster analysis is formulated as a problem of non-smooth, non-convex optimization, a...
Abstract. Correlation clustering is the problem of finding a crisp par-tition of the vertices of a c...
AbstractWe consider the following general correlation-clustering problem [N. Bansal, A. Blum, S. Cha...
We study the problem of clustering a set of data points based on their similarity matrix, each entry...
Abstract Clustering is a fundamental tool for analyzing large data sets. A rich body of work has be...
Data clustering is a difficult problem due to the complex and heterogeneous natures of multidimensio...
Several clustering methods (e.g., Normalized Cut and Ratio Cut) divide the Min Cut cost function by ...
An algorithm is developed for solving clustering problems with the similarity measure defined using ...
Correlation clustering is the problem of finding a crisp partition of the vertices of a correlation ...
In the Correlation Clustering problem, we are given a graph with its edges labeled as ``similar" and...
Correlation clustering is a widely studied framework for clustering based on pairwise similarity and...
Abstract. We describe a new optimization scheme for finding high-quality clusterings in planar graph...