实现时间贴现影响最大化

Arijit Khan
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引用次数: 9

摘要

社交网络中经典的影响力最大化(IM)问题并没有区分一个活动是在一周内还是在一年内获得病毒式传播。然而,从实际的角度来看,一项新技术或一部即将上映的电影的宣传活动必须尽快传播,否则它们就会过时。为此,我们制定并研究了在社交网络中最大化时间折扣影响传播的新问题,也就是说,活动参与者对用户“何时”和“有多大可能”受到影响都感兴趣。特别是,我们假设活动参与者有一个效用函数,该函数随着用户受到影响所需的时间单调减少,因为激活了种子节点。本文所要解决的问题是使该效用函数在所有网络用户上的期望聚合值最大化。这是一个新颖而相关的问题,令人惊讶的是,以前从未有人研究过。时间折扣影响最大化(TDIM)作为经典即时影响的推广,仍然是np困难的。然而,我们的主要贡献是证明了目标函数在各种影响级联模型(如独立级联、线性阈值和最大影响树模型)下对任何单调递减的时间函数的子模块性,从而设计出具有理论性能保证的近似算法。我们还说明了现有的影响最大化优化技术(例如,CELF)比TDIM更有效。我们的实验结果证明了我们的解决方案在几个基线上的有效性,包括经典的影响最大化算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Time-Discounted Influence Maximization
The classical influence maximization (IM) problem in social networks does not distinguish between whether a campaign gets viral in a week or in a year. From the practical standpoint, however, campaigns for a new technology or an upcoming movie must be spread as quickly as possible, otherwise they will be obsolete. To this end, we formulate and investigate the novel problem of maximizing the time-discounted influence spread in a social network, that is, the campaigner is interested in both "when" and "how likely" a user would be influenced. In particular, we assume that the campaigner has a utility function which monotonically decreases with the time required for a user to get influenced, since the activation of the seed nodes. The problem that we solve in this paper is to maximize the expected aggregated value of this utility function over all network users. This is a novel and relevant problem that, surprisingly, has not been studied before. Time-discounted influence maximization (TDIM), being a generalization of the classical IM, still remains NP-hard. However, our main contribution is to prove the sub-modularity of the objective function for any monotonically decreasing function of time, under a variety of influence cascading models, e.g., the independent cascade, linear threshold, and maximum influence arborescence models, thereby designing approximate algorithms with theoretical performance guarantees. We also illustrate that the existing optimization techniques (e.g., CELF) for influence maximization are more efficient over TDIM. Our experimental results demonstrate the effectiveness of our solutions over several baselines including the classical influence maximization algorithms.
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