We formulate weighted graph clustering as a prediction problem: given a subset of edge weights we analyze the ability of graph clustering to predict the remaining edge weights. This formulation enables practical and theoretical comparison of different approaches to graph clustering as well as comparison of graph clustering with other possible ways to model the graph. We adapt the PAC-Bayesian analysis of co-clustering (Seldin and Tishby, 2008; Seldin, 2009) to derive a PAC-Bayesian generalization bound for graph clustering. The bound shows that graph clustering should optimize a trade-off between empirical data fit and the mutual information that clusters preserve on the graph nodes. A similar trade-off derived from information-theoretic co...
Abstract. A promising approach to graph clustering is based on the intuitive notion of intra-cluster...
The goal of graph clustering is to partition vertices in a large graph into different clusters ...
Graph clustering involves the task of partitioning nodes, so that the edge density is higher within ...
We review briefly the PAC-Bayesian analysis of co-clustering (Seldin and Tishby, 2008, 2009, 2010), ...
Clustering is a widely used tool for exploratory data analysis. However, the theoretical understandi...
Graph clustering methods such as spectral clustering are defined for general weighted graphs. In mac...
Graph clustering, also known as community detection, is a long-standing problem in data mining. In r...
Graph clustering is an important task in data mining and pattern recognition. With the rapid develop...
Clustering is a widely used tool for exploratory data analysis. However, the theoretical understandi...
We applied PAC-Bayesian framework to derive gen- eralization bounds for co-clustering1. The analysis...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
AbstractWe consider the following general correlation-clustering problem [N. Bansal, A. Blum, S. Cha...
Network data represent relational information between interacting entities. They can be described by...
Graph clustering methods such as spectral clustering are defined for general weighted graphs. In mac...
In graph theory and network analysis, communities or clusters are sets of nodes in a graph that shar...
Abstract. A promising approach to graph clustering is based on the intuitive notion of intra-cluster...
The goal of graph clustering is to partition vertices in a large graph into different clusters ...
Graph clustering involves the task of partitioning nodes, so that the edge density is higher within ...
We review briefly the PAC-Bayesian analysis of co-clustering (Seldin and Tishby, 2008, 2009, 2010), ...
Clustering is a widely used tool for exploratory data analysis. However, the theoretical understandi...
Graph clustering methods such as spectral clustering are defined for general weighted graphs. In mac...
Graph clustering, also known as community detection, is a long-standing problem in data mining. In r...
Graph clustering is an important task in data mining and pattern recognition. With the rapid develop...
Clustering is a widely used tool for exploratory data analysis. However, the theoretical understandi...
We applied PAC-Bayesian framework to derive gen- eralization bounds for co-clustering1. The analysis...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
AbstractWe consider the following general correlation-clustering problem [N. Bansal, A. Blum, S. Cha...
Network data represent relational information between interacting entities. They can be described by...
Graph clustering methods such as spectral clustering are defined for general weighted graphs. In mac...
In graph theory and network analysis, communities or clusters are sets of nodes in a graph that shar...
Abstract. A promising approach to graph clustering is based on the intuitive notion of intra-cluster...
The goal of graph clustering is to partition vertices in a large graph into different clusters ...
Graph clustering involves the task of partitioning nodes, so that the edge density is higher within ...