Literature DB >> 28113490

Clustering with Hypergraphs: The Case for Large Hyperedges.

Pulak Purkait, Tat-Jun Chin, Alireza Sadri, David Suter.   

Abstract

The extension of conventional clustering to hypergraph clustering, which involves higher order similarities instead of pairwise similarities, is increasingly gaining attention in computer vision. This is due to the fact that many clustering problems require an affinity measure that must involve a subset of data of size more than two. In the context of hypergraph clustering, the calculation of such higher order similarities on data subsets gives rise to hyperedges. Almost all previous work on hypergraph clustering in computer vision, however, has considered the smallest possible hyperedge size, due to a lack of study into the potential benefits of large hyperedges and effective algorithms to generate them. In this paper, we show that large hyperedges are better from both a theoretical and an empirical standpoint. We then propose a novel guided sampling strategy for large hyperedges, based on the concept of random cluster models. Our method can generate large pure hyperedges that significantly improve grouping accuracy without exponential increases in sampling costs. We demonstrate the efficacy of our technique on various higher-order grouping problems. In particular, we show that our approach improves the accuracy and efficiency of motion segmentation from dense, long-term, trajectories.

Year:  2016        PMID: 28113490     DOI: 10.1109/TPAMI.2016.2614980

Source DB:  PubMed          Journal:  IEEE Trans Pattern Anal Mach Intell        ISSN: 0098-5589            Impact factor:   6.226


  1 in total

1.  Model-based clustering for random hypergraphs.

Authors:  Tin Lok James Ng; Thomas Brendan Murphy
Journal:  Adv Data Anal Classif       Date:  2021-06-28
  1 in total

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