Title
Motif and Hypergraph Correlation Clustering.
Abstract
Motivated by applications in social and biological network analysis, we introduce a new form of agnostic clustering termed~emph{motif correlation clustering}, which aims to minimize the cost of clustering errors associated with both edges and higher-order network structures. The problem may be succinctly described as follows: Given a complete graph $G$, partition the vertices of the graph so that certain predetermined `importantu0027 subgraphs mostly lie within the same cluster, while `less relevantu0027 subgraphs are allowed to lie across clusters. Our contributions are as follows: We first introduce several variants of motif correlation clustering and then show that these clustering problems are NP-hard. We then proceed to describe polynomial-time clustering algorithms that provide constant approximation guarantees for the problems at hand. Despite following the frequently used LP relaxation and rounding procedure, the algorithms involve a sophisticated and carefully designed neighborhood growing step that combines information about both edge and motif structures. We conclude with several examples illustrating the performance of the developed algorithms on synthetic and real networks.
Year
DOI
Venue
2018
10.1109/tit.2019.2940246
IEEE Transactions on Information Theory
DocType
Volume
Citations 
Journal
abs/1811.02089
0
PageRank 
References 
Authors
0.34
0
3
Name
Order
Citations
PageRank
Pan Li14111.95
Gregory J. Puleo2399.53
Olgica Milenkovic31650130.62