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首页> 外文期刊>IEEE systems journal >PPRank: Economically Selecting Initial Users for Influence Maximization in Social Networks
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PPRank: Economically Selecting Initial Users for Influence Maximization in Social Networks

机译:PPRank:经济地选择初始用户以实现社交网络中的影响力最大化

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摘要

This paper focuses on seeking a new heuristic scheme for an influence maximization problem in social networks: how to economically select a subset of individuals (so-called seeds) to trigger a large cascade of further adoptions of a new behavior based on a contagion process. Most existing works on selection of seeds assumed that the constant number k seeds could be selected, irrespective of the intrinsic property of each individual's different susceptibility of being influenced (e.g., it may be costly to persuade some seeds to adopt a new behavior). In this paper, a price-performance-ratio inspired heuristic scheme, PPRank, is proposed, which investigates how to economically select seeds within a given budget and meanwhile try to maximize the diffusion process. Our paper's contributions are threefold. First, we explicitly characterize each user with two distinct factors: the susceptibility of being influenced (SI) and influential power (IP) representing the ability to actively influence others and formulate users' SIs and IPs according to their social relations, and then, a convex price-demand curve-based model is utilized to properly convert each user's SI into persuasion cost (PC) representing the cost used to successfully make the individual adopt a new behavior. Furthermore, a novel cost-effective selection scheme is proposed, which adopts both the price performance ratio (PC-IP ratio) and user's IP as an integrated selection criterion and meanwhile explicitly takes into account the overlapping effect; finally, simulations using both artificially generated and real-trace network data illustrate that, under the same budgets, PPRank can achieve larger diffusion range than other heuristic and brute-force greedy schemes without taking users' persuasion costs into account.
机译:本文着重于寻求一种新的启发式方案,以解决社交网络中的影响最大化问题:如何经济地选择个体的一个子集(所谓的种子),以基于传染过程触发对新行为的进一步采纳。现有的大多数种子选择工作都假定可以选择常数k的种子,而不管每个人受到不同易感性的内在属性如何(例如,说服某些种子采取新的行为可能会很昂贵)。在本文中,提出了一种以价格-性能比为启发的启发式方案PPRank,该方案研究了如何在给定的预算内经济地选择种子,同时尝试使扩散过程最大化。我们论文的贡献是三方面的。首先,我们用两个截然不同的因素来明确描述每个用户的特征:被影响的易感性(SI)和影响力(IP)代表积极影响他人并根据其社会关系制定用户的SI和IP的能力,然后,利用基于价格凸曲线的模型将每个用户的SI正确转换为说服成本(PC),该说服成本表示成功使个人采用新行为所花费的成本。此外,提出了一种新的具有成本效益的选择方案,该方案以价格性能比(PC-IP比率)和用户的IP为综合选择标准,同时明确考虑了重叠效应。最后,使用人工生成的和实际跟踪的网络数据进行的仿真表明,在相同的预算下,PPRank可以实现比其他启发式和蛮力贪婪方案更大的扩散范围,而无需考虑用户的说服成本。

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