Discovering Dense Correlated Subgraphs in Dynamic Networks
Publication date
2021-05-09
Editors
Karlapalem, Kamal
Cheng, Hong
Ramakrishnan, Naren
Agrawal, R. K.
Reddy, P. Krishna
Srivastava, Jaideep
Chakraborty, Tanmoy
Advisors
Supervisors
Document Type
Part of book
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taverne
Abstract
Given a dynamic network, where edges appear and disappear over time, we are interested in finding sets of edges that have similar temporal behavior and form a dense subgraph. Formally, we define the problem as the enumeration of the maximal subgraphs that satisfy specific density and similarity thresholds. To measure the similarity of the temporal behavior, we use the correlation between the binary time series that represent the activity of the edges. For the density, we study two variants based on the average degree. For these problem variants we enumerate the maximal subgraphs and compute a compact subset of subgraphs that have limited overlap. We propose an approximate algorithm that scales well with the size of the network, while achieving a high accuracy. We evaluate our framework on both real and synthetic datasets. The results of the synthetic data demonstrate the high accuracy of the approximation and show the scalability of the framework.
Keywords
Taverne, Theoretical Computer Science, General Computer Science
Citation
Preti, G, Rozenshtein, P, Gionis, A & Velegrakis, Y 2021, Discovering Dense Correlated Subgraphs in Dynamic Networks. in K Karlapalem, H Cheng, N Ramakrishnan, R K Agrawal, P K Reddy, J Srivastava & T Chakraborty (eds), Advances in Knowledge Discovery and Data Mining : 25th Pacific-Asia Conference, PAKDD 2021, Virtual Event, May 11–14, 2021, Proceedings, Part I. 1 edn, Lecture Notes in Computer Science , vol. 12712 , Springer, Cham, pp. 395-407, 25th Pacific-Asia Conference on Knowledge Discovery and Data Mining, PAKDD 2021, Virtual, Online, 11/05/21. https://doi.org/10.1007/978-3-030-75762-5_32, conference