首页> 外文会议>International Conference on Web Information Systems Engineering >A Novel and Model Independent Approach for Efficient Influence Maximization in Social Networks
【24h】

A Novel and Model Independent Approach for Efficient Influence Maximization in Social Networks

机译:社交网络中有效影响最大化的一种新颖与模型独立方法

获取原文
获取外文期刊封面目录资料

摘要

Most of the recent online social media collects a huge volume of data not just about who is linked with whom (aka link data) but also, about who is interacting with whom (aka interaction data). The presence of both variety and volume in these datasets pose new challenges while conducting social network analysis. In particular, we present a general framework to deal with both variety and volume in the data for a key social network analysis task - Influence Maximization. The well known influence maximization problem [15] (or viral marketing through social networks) deals with selecting a few influential initial seeds to maximize the awareness of product(s) over the social network. As it is computationally hard [15], a greedy approximation algorithm is designed to address the influence maximization problem. However, the major drawback of this greedy algorithm is that it runs extremely slow even on network datasets consisting of a few thousand nodes and edges [20,6]. Several efficient heuristics have been proposed in the literature [6] to alleviate this computational difficulty; however these heuristics are designed for specific influence propagation models such as linear threshold model and independent cascade model. This motivates the strong need to design an approach that not only works with any influence propagation model, but also efficiently solves the influence maximization problem. In this paper, we precisely address this problem by proposing a new framework which fuses both link and interaction data to come up with a backbone for a given social network, which can further be used for efficient influence maximization. We then conduct thorough experimentation with several real life social network datasets such as DBLP, Epinions, Digg, and Slashdot and show that the proposed approach is efficient as well as scalable.
机译:最近的大多数在线社交媒体都不会与谁联系在一起(又名链接数据),而且还收集大量数据,还收集谁,而且是谁与谁交互(AKA交互数据)。在这些数据集中的各种和体积的存在在进行社交网络分析时构成了新的挑战。特别是,我们展示了一般框架,以处理对关键社交网络分析任务的数据中的各种和体积 - 影响最大化。众所周知的影响力最大化的问题[15](或者通过社交网络病毒式营销)选择用几个有影响力的初始种子,最大限度地提高产品的(一个或多个)在社交网络意识交易。因为它在计算上是硬[15],一种贪婪近似算法旨在解决的影响最大化问题。然而,这种贪心算法的主要缺点是,它运行的很对,包括几千个节点和边[20,6]的网络数据集甚至放缓。几个高效启发式已经在文献中提出了[6]来缓解这个计算难度;然而,这些启发式专为特定影响传播模型而设计,例如线性阈值模型和独立级联模型。这激励了强烈的需要设计一种不仅适用于任何影响传播模型的方法,而且有效地解决了影响最大化问题。在本文中,我们通过提出融合链路和交互数据的新框架来精确解决这一问题,以便给定社交网络的骨干,这可以进一步用于最大化的有效影响。然后,我们进行深入的实验与一些现实生活中的社交网络数据集,如DBLP,Epinions,Digg和Slashdot和展示了该方法的有效性和可扩展性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号