CIP: Community-based influence spread prediction for large-scale social networks

Vairavan Murugappan, Pranav Pamidighantam, Suresh Subramanian, Eunice E. Santos
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Abstract

Understanding information diffusion and influence spread remains one of the key problems in network science. Many algorithms and techniques have been proposed to maximize information diffusion and identify key opinion leaders in a given network. A central idea in most of these works is based on the “influential hypothesis” – that a small number of influencers can induce information cascades that spread to a significant portion of the population. However, works in social network analysis have shown that a critical mass of individuals who can be easily influenced (susceptible) is also crucial to drive influence cascades in a population. In this paper, we propose a novel community-based influence spread prediction (CIP) methodology to understand and predict influence spread based on individuals’ susceptibility to influence. The proposed approach leverages inherent attributes in social networks such as individual traits and community structure to help understand and predict influence spread. In addition, the CIP methodology also presents many natural avenues for parallelization and scalability which are crucial for handling real-world large-scale social networks. Preliminary comparisons with simulated influence spread using state-of-the-art influence maximization algorithms on a real-world large-scale physician network show that the CIP method can predict influence spread with a difference of less than 7%. The findings also demonstrate that the CIP approach can be used effectively to study influence spread characteristics and aid in the formulation of strategies to reach certain demographic groups or communities.
基于社区的大规模社会网络影响力传播预测
理解信息扩散和影响传播仍然是网络科学的关键问题之一。已经提出了许多算法和技术来最大化信息扩散和识别给定网络中的关键意见领袖。这些作品中的一个中心思想是基于“影响力假设”——少数有影响力的人可以引发信息级联,传播到人口的很大一部分。然而,社会网络分析的工作表明,容易受影响(易受影响)的个体的临界质量对于推动人群中的影响级联也是至关重要的。本文提出了一种基于个体对影响的易感性来理解和预测影响传播的新型社区影响传播预测方法。所提出的方法利用社会网络中的固有属性,如个人特征和社区结构,以帮助理解和预测影响传播。此外,CIP方法还为并行化和可扩展性提供了许多自然的途径,这对于处理现实世界的大规模社会网络至关重要。与使用最先进的影响最大化算法在现实世界的大型医生网络上模拟的影响传播进行初步比较表明,CIP方法可以预测影响传播,差异小于7%。研究结果还表明,CIP方法可以有效地用于研究影响传播特征,并有助于制定策略,以达到特定的人口群体或社区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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