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Measuring and Maximizing Influence via Random Walk in Social Activity Networks

机译:通过随机行走在社交活动网络中测量和最大化影响

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With the popularity of OSNs, finding a set of most influential users (or nodes) so as to trigger the largest influence cascade is of significance. For example, companies may take advantage of the "word-of-mouth" effect to trigger a large cascade of purchases by offering free samples/discounts to those most influential users. This task is usually modeled as an influence maximization problem, and it has been widely studied in the past decade. However, considering that users in OSNs may participate in various kinds of online activities, e.g., giving ratings to products, joining discussion groups, etc., influence diffusion through online activities becomes even more significant. In this paper, we study the impact of online activities by formulating the influence maximization problem for social-activity networks (SANs) containing both users and online activities. To address the computation challenge, we define an influence centrality via random walks to measure influence, then use the Monte Carlo framework to efficiently estimate the centrality in SANs. Furthermore, we develop a greedy-based algorithm with two novel optimization techniques to find the most influential users. By conducting extensive experiments with real-world datasets, we show our approach is more efficient than the state-of-the-art algorithm IMM [17] when we needs to handle large amount of online activities.
机译:凭借OSN的普及,找到一组最有影响力的用户(或节点),以触发最大的影响级联具有重要意义。例如,公司可能会利用“口碑”效应,通过向最具影响力的用户提供免费样品/折扣来触发大型购物。这项任务通常被建模为影响最大化问题,并且在过去十年中已被广泛研究。但是,考虑到奥斯人的用户可以参与各种在线活动,例如,给予产品的评级,加入讨论组等,通过在线活动的影响扩散变得更加重要。在本文中,我们研究了在线活动的影响,通过制定包含用户和在线活动的社交活动网络(SAN)的影响最大化问题。为了解决计算挑战,我们通过随机散步来定义影响中心,以测量影响力,然后使用蒙特卡罗框架来有效地估计SAN中的中心地位。此外,我们开发了一种基于贪婪的算法,具有两种新颖的优化技术,以找到最有影响力的用户。通过进行与真实世界的数据集大量的实验,我们证明我们的方法是比国家的最先进的算法IMM [17]当我们需要处理大量的线上活动更有效。

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