Top-k Connected Overlapping Densest Subgraphs in Dual Networks
August 04, 2020 Β· Declared Dead Β· π International Workshop on Complex Networks & Their Applications
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Authors
Riccardo Dondi, Pietro Hiram Guzzi, Mohammad Mehdi Hosseinzadeh
arXiv ID
2008.01573
Category
cs.DS: Data Structures & Algorithms
Citations
5
Venue
International Workshop on Complex Networks & Their Applications
Last Checked
4 months ago
Abstract
Networks are largely used for modelling and analysing data and relations among them. Recently, it has been shown that the use of a single network may not be the optimal choice, since a single network may misses some aspects. Consequently, it has been proposed to use a pair of networks to better model all the aspects, and the main approach is referred to as dual networks (DNs). DNs are two related graphs (one weighted, the other unweighted) that share the same set of vertices and two different edge sets. In DNs is often interesting to extract common subgraphs among the two networks that are maximally dense in the conceptual network and connected in the physical one. The simplest instance of this problem is finding a common densest connected subgraph (DCS), while we here focus on the detection of the Top-k Densest Connected subgraphs, i.e. a set k subgraphs having the largest density in the conceptual network which are also connected in the physical network. We formalise the problem and then we propose a heuristic to find a solution, since the problem is computationally hard. A set of experiments on synthetic and real networks is also presented to support our approach.
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