Efficient sampling of complex interdependent and multiplex networks

Author:

Subasi Omer1ORCID,Chatterjee Samrat1ORCID

Affiliation:

1. Physical and Computational Sciences Directorate, Pacific Northwest National Laboratory (PNNL), 902 Battelle Blvd, P.O. Box 999, Richland, WA 99352, USA

Abstract

Abstract Efficient sampling of interdependent and multiplex infrastructure networks is critical for effectively applying failure and recovery algorithms in real-world settings, as well as to generate property-preserving reduced-order graph-based ensembles that address topological uncertainties. In this article, we first explore the performance, that is, the success in preserving graph properties, of graph sampling algorithms for interdependent and multiplex networks with synthetic and real-world graphs. We simulate sampling algorithms under different parameter settings. These settings include probabilistic graph generators, coupling patterns and various performance metrics. Our results show that while Random Node and Random Walk sampling algorithms perform best for interdependent networks, Random Edge and Forest Fire sampling algorithms perform best for multiplex networks. Second, we propose and implement a novel similarity-based sampling algorithm for multiplex networks that samples only ${\it log}(N)$ number of layers of an $N$-layer multiplex network while yielding computational savings with performance guarantees. Experimental results show that similarity-based sampling outperforms complete sampling of all layers while decreasing performance costs from a linear scale to a logarithmic one. Our results also indicate that similarity-based sampling outperforms complete sampling and random selection in nearly all scenarios when tested with real-world data.

Funder

Pacific Northwest National Laboratories (PNNL) National Security Directorate Mission Seed Laboratory Directed Research and Development (LDRD) Program

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics,Computational Mathematics,Control and Optimization,Management Science and Operations Research,Computer Networks and Communications

Reference40 articles.

1. A survey and taxonomy of graph sampling;Hu,,2013

2. Survey of approaches to generate realistic synthetic graphs;Lim,,2016

3. Sampling from large graphs;Leskovec,;Proceedings of the 12th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining,2006

4. Evaluation of graph sampling: a visualization perspective;Wu,;IEEE Trans. Visual. Comput. Graph.,2017

5. A general framework of hybrid graph sampling for complex network analysis;Xu,;IEEE INFOCOM 2014 - IEEE Conference on Computer Communications,2014

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