Abstract

Spreading social influence with both positive and negative opinions in online networks Social networks are important media for spreading information, ideas, and influence among individuals. Most existing research focuses on understanding the characteristics of social networks, investigating how information is spread through the word-of-mouth effect of social networks, or exploring social influences among individuals and groups. However, most studies ignore negative influences among individuals and groups. Motivated by the goal of alleviating social problems, such as drinking, smoking, and gambling, and influence-spreading problems, such as promoting new products, we consider positive and negative influences, and propose a new optimization problem called the Minimum-sized Positive Influential Node Set (MPINS) selection problem to identify the minimum set of influential nodes such that every node in the network can be positively influenced by these selected nodes with no less than a threshold of θ. Our contributions are threefold. First, we prove that, under the independent cascade model considering positive and negative influences, MPINS is APX-hard. Subsequently, we present a greedy approximation algorithm to address the MPINS selection problem. Finally, to validate the proposed greedy algorithm, we conduct extensive simulations and experiments on random graphs and seven different realworld data sets that represent small-, medium-, and large-scale networks.

Highlights

  • A social network (e.g., Facebook, Google+, and MySpace) is composed of a set of nodes that share a similar interest or purpose

  • Aside from taking positive and negative influences into consideration, our work is different from the influence maximization problem because we find a minimum-sized set of individuals that guarantees positive influences on every node in the network with no less than a threshold of Â, while the influence maximization problem focuses on choosing a subset of a predefined size k that maximizes the expected number of influenced individuals

  • Diameter 29 18 21 21 statistics are summarized by the number of nodes and edges, the number of nodes and edges in the Largest Weakly Connected Component (LWCC), the number of nodes and edges in the Largest Strongly Connected Component (LSCC), and the diameter

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Summary

Introduction

A social network (e.g., Facebook, Google+, and MySpace) is composed of a set of nodes (such as individuals or organizations) that share a similar interest or purpose. The social network is a powerful medium of communication for sharing, exchanging, Jing (Selena) He et al.: Spreading Social Influence with both Positive and Negative Opinions in Online Networks gambling, a gambling insulator has a positive influence on his friends/neighbors. If Jack and Bob (marked by the person with a red tie) are gambling insulators, they have a positive influence on their neighbors. Jack has a positive influence on Chris with a probability of 60% Because she is a gambler, Mary has a negative influence on Tony with a probability of 90%. Motivated by the aim to alleviate social problems, such as drinking, smoking, and gambling, this work aims to find a Minimum-sized Positive Influential Node Set (MPINS), which positively influences every individual in a social network with no less than a pre-defined threshold of Â

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