Efficient Information Flow Maximization in Probabilistic Graphs (Extended Abstract)

Published in 34th IEEE International Conference on Data Engineering, ICDE 2018, 2018

Recommended citation: Efficient Information Flow Maximization in Probabilistic Graphs (Extended Abstract). ICDE 2018: 1801-1802
https://www.computer.org/csdl/proceedings/icde/2018/5520/00/552000b801-abs.html

Abstract

Reliable propagation of information through large networks, e.g. communication networks, social networks or sensor networks is very important in many applications concerning marketing, social networks, and wireless sensor networks. However, social ties of friendship may be obsolete, and communication links may fail, inducing the notion of uncertainty in such networks. In this paper, we address the problem of optimizing information propagation in uncertain networks given a constrained budget of edges. We show that this problem requires to solve two NP-hard subproblems: the computation of expected information flow, and the optimal choice of edges. To compute the expected information flow to a source vertex, we propose the F-tree as a specialized data structure, that identifies independently components of the graph for which the information flow can either be computed analytically and efficiently, or for which traditional Monte-Carlo sampling can be applied independent of the remaining network. For the problem of finding the optimal edges, we propose a series of heuristics that exploit properties of this data structure. Our evaluation shows that these heuristics lead to high quality solutions, thus yielding high information flow, while maintaining low running time.