Scalable influence maximization for prevalent viral marketing in large-scale social networks

Wei Chen, Chi Wang, Yajun Wang
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引用次数: 1668

Abstract

Influence maximization, defined by Kempe, Kleinberg, and Tardos (2003), is the problem of finding a small set of seed nodes in a social network that maximizes the spread of influence under certain influence cascade models. The scalability of influence maximization is a key factor for enabling prevalent viral marketing in large-scale online social networks. Prior solutions, such as the greedy algorithm of Kempe et al. (2003) and its improvements are slow and not scalable, while other heuristic algorithms do not provide consistently good performance on influence spreads. In this paper, we design a new heuristic algorithm that is easily scalable to millions of nodes and edges in our experiments. Our algorithm has a simple tunable parameter for users to control the balance between the running time and the influence spread of the algorithm. Our results from extensive simulations on several real-world and synthetic networks demonstrate that our algorithm is currently the best scalable solution to the influence maximization problem: (a) our algorithm scales beyond million-sized graphs where the greedy algorithm becomes infeasible, and (b) in all size ranges, our algorithm performs consistently well in influence spread --- it is always among the best algorithms, and in most cases it significantly outperforms all other scalable heuristics to as much as 100%--260% increase in influence spread.
大规模社交网络中流行的病毒式营销的可扩展影响最大化
影响最大化,由Kempe, Kleinberg和Tardos(2003)定义,是指在一定的影响级联模型下,在社会网络中找到一小组种子节点,使影响传播最大化的问题。影响最大化的可扩展性是在大型在线社交网络中实现流行病毒式营销的关键因素。先前的解决方案,如Kempe等人(2003)的贪婪算法及其改进是缓慢且不可扩展的,而其他启发式算法在影响传播方面不能提供一致的良好性能。在本文中,我们设计了一种新的启发式算法,在我们的实验中可以很容易地扩展到数百万个节点和边。我们的算法有一个简单的可调参数,用户可以控制算法的运行时间和影响范围之间的平衡。我们在几个真实世界和合成网络上进行的大量模拟结果表明,我们的算法是目前影响最大化问题的最佳可扩展解决方案:(a)我们的算法可扩展到超过百万大小的图,在此贪心算法变得不可行的情况下,(b)在所有大小范围内,我们的算法在影响传播方面始终表现良好——它始终是最好的算法之一,并且在大多数情况下,它显著优于所有其他可扩展启发式算法,影响传播增加了100%- 260%。
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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