Abstract

Influence maximization in social networks has been widely studied motivated by applications like spread of ideas or innovations in a network and viral marketing of products. Current studies focus almost exclusively on unsigned social networks containing only positive relationships (e.g. friend or trust) between users. Influence maximization in signed social networks containing both positive relationships and negative relationships (e.g. foe or distrust) between users is still a challenging problem that has not been studied. Thus, in this paper, we propose the polarity-related influence maximization (PRIM) problem which aims to find the seed node set with maximum positive influence or maximum negative influence in signed social networks. To address the PRIM problem, we first extend the standard Independent Cascade (IC) model to the signed social networks and propose a Polarity-related Independent Cascade (named IC-P) diffusion model. We prove that the influence function of the PRIM problem under the IC-P model is monotonic and submodular Thus, a greedy algorithm can be used to achieve an approximation ratio of 1-1/e for solving the PRIM problem in signed social networks. Experimental results on two signed social network datasets, Epinions and Slashdot, validate that our approximation algorithm for solving the PRIM problem outperforms state-of-the-art methods.

Highlights

  • Online social networks such as Twitter, Facebook and Google+ have developed rapidly in recent years

  • The purpose of the polarity-related influence maximization (PRIM) problem is to find the node set with maximum positive influence or maximum negative influence in signed social networks

  • Taking the positive influence maximization (PIM) problem as an example, we explore the relations between positive influence and negative influence of the seed node sets selected by different methods

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Summary

Introduction

Online social networks such as Twitter, Facebook and Google+ have developed rapidly in recent years. They support social interaction and information diffusion among users all over the world. These online sites present great opportunities for large-scale viral marketing. Influence maximization emerges as a fundamental problem concerning the diffusion of products, opinions, and innovations through social networks [2]. All the above works consider influence maximization in unsigned social networks which only have positive relationships between users (e.g. friend or trust). Influence maximization in signed social networks is a key problem that has not been studied and it is the focus of this paper

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