Weighted Theta Functions and Embeddings with Applications to Max-Cut, Clustering and Summarization

Johansson, Fredrik D., Chattoraj, Ankani, Bhattacharyya, Chiranjib, Dubhashi, Devdatt

Neural Information Processing Systems 

We introduce a unifying generalization of the Lovász theta function, and the associated geometric embedding, for graphs with weights on both nodes and edges. We show how it can be computed exactly by semidefinite programming, and how to approximate it using SVM computations. We show how the theta function can be interpreted as a measure of diversity in graphs and use this idea, and the graph embedding in algorithms for Max-Cut, correlation clustering and document summarization, all of which are well represented as problems on weighted graphs.

Similar Docs  Excel Report  more

TitleSimilaritySource
None found