When Less Is More: Systematic Analysis of Cascade-Based Community Detection

Author:

Prokhorenkova Liudmila1ORCID,Tikhonov Alexey2,Litvak Nelly3ORCID

Affiliation:

1. Yandex Research, MIPT, HSE University, Moscow, Russia

2. Yandex, Berlin, Germany

3. University of Twente, Eindhoven University of Technology, Enschede, The Netherlands

Abstract

Information diffusion, spreading of infectious diseases, and spreading of rumors are fundamental processes occurring in real-life networks. In many practical cases, one can observe when nodes become infected, but the underlying network, over which a contagion or information propagates, is hidden. Inferring properties of the underlying network is important since these properties can be used for constraining infections, forecasting, viral marketing, and so on. Moreover, for many applications, it is sufficient to recover only coarse high-level properties of this network rather than all its edges. This article conducts a systematic and extensive analysis of the following problem: Given only the infection times, find communities of highly interconnected nodes. This task significantly differs from the well-studied community detection problem since we do not observe a graph to be clustered. We carry out a thorough comparison between existing and new approaches on several large datasets and cover methodological challenges specific to this problem. One of the main conclusions is that the most stable performance and the most significant improvement on the current state-of-the-art are achieved by our proposed simple heuristic approaches agnostic to a particular graph structure and epidemic model. We also show that some well-known community detection algorithms can be enhanced by including edge weights based on the cascade data.

Funder

Ministry of Education and Science of the Russian Federation in the framework of MegaGrant

Russian President

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

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