We propose a new method to quantify the solution stability of a large class of combinatorial optimization problems arising in machine learning. As practical example we apply the method to correlation clustering, clustering aggregation, modularity clustering, and relative performance significance clustering. Our method is extensively motivated by the idea of linear programming relaxations. We prove that when a relaxation is used to solve the original clustering problem, then the solution stability calculated by our method is conservative, that is, it never overestimates the solution stability of the true, unrelaxed problem. We also demonstrate how our method can be used to compute the entire path of optimal solutions as the optimization prob...
Machine learning problems of supervised classification, unsupervised clustering and parsimonious app...
We discuss a variety of clustering problems arising in combinatorial applications and in classifying...
This work studies clustering algorithms which operates with ordinal or comparison-based queries (ope...
We propose a new method to quantify the solution stability of a large class of combinatorial optimiz...
The rise of convex programming has changed the face of many research fields in recent years, machine...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
A novel center-based clustering algorithm is proposed in this paper. We first for-mulate clustering ...
Resolution parameters in graph clustering control the size and structure of clusters formed by solvi...
In this talk, we give an overview of the current best approximation algorithms for fundamental clust...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
We study the notion of stability and perturbation resilience introduced by Bilu and Linial (2010) an...
We consider the problem of Consensus Cluster-ing. Given a finite set of input clusterings over some ...
Typically clustering algorithms provide clustering solutions with prespecified number of clusters. T...
A popular apprach for solving complex optimization problems is through relaxation: some constraints ...
We consider the following general graph clustering problem: given a complete undirected graph G=(V,E...
Machine learning problems of supervised classification, unsupervised clustering and parsimonious app...
We discuss a variety of clustering problems arising in combinatorial applications and in classifying...
This work studies clustering algorithms which operates with ordinal or comparison-based queries (ope...
We propose a new method to quantify the solution stability of a large class of combinatorial optimiz...
The rise of convex programming has changed the face of many research fields in recent years, machine...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
A novel center-based clustering algorithm is proposed in this paper. We first for-mulate clustering ...
Resolution parameters in graph clustering control the size and structure of clusters formed by solvi...
In this talk, we give an overview of the current best approximation algorithms for fundamental clust...
Clustering is often formulated as a discrete optimization problem. The objective is to find, among a...
We study the notion of stability and perturbation resilience introduced by Bilu and Linial (2010) an...
We consider the problem of Consensus Cluster-ing. Given a finite set of input clusterings over some ...
Typically clustering algorithms provide clustering solutions with prespecified number of clusters. T...
A popular apprach for solving complex optimization problems is through relaxation: some constraints ...
We consider the following general graph clustering problem: given a complete undirected graph G=(V,E...
Machine learning problems of supervised classification, unsupervised clustering and parsimonious app...
We discuss a variety of clustering problems arising in combinatorial applications and in classifying...
This work studies clustering algorithms which operates with ordinal or comparison-based queries (ope...