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A branch-and-cut approach for the least cost influence problem on social networks

机译:社交网络中最少成本影响问题的分支和切割方法

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摘要

This paper studies a problem in the online targeted marketing setting called the least cost influence problem (LCIP) that is known to be NP-hard. The goal is to find the minimum total amount of inducements (individuals to target and associated tailored incentives) required to influence a given population. We develop a branch-and-cut approach to solve this LCIP on arbitrary graphs. We build upon Giinnec, et al.'s novel totally unimodular (TU) formulation for the LCIP on trees. The key observation in applying this TU formulation to arbitrary graphs is to enforce an exponential set of inequalities that ensure the influence propagation network is acyclic. We also design several enhancements to the branch-and-cut procedure that improve its performance. We provide a large set of computational experiments on real-world graphs with up to 155 000 nodes and 327 000 edges that demonstrates the efficacy of the branch-and-cut approach. This branch-and-cut approach finds solutions that are on average 1.87% away from optimality based on a test-bed of 160 real-world graph instances. We also develop a heuristic that prioritizes nodes that receive low influence from their peers. This heuristic works particularly well on arbitrary graphs, providing solutions that are on average 1.99% away from optimality. Finally, we observe that partial incentives can result in significant cost savings, over 55% on average, compared to the setting where partial incentives are not allowed.
机译:本文研究了在线目标营销环境中的问题,称为最低成本影响问题(LCIP),该问题已知是NP-HARD的。目标是找到影响特定人群所需的最低诱导总量(个人瞄准和相关的量身定制激励措施)。我们开发了一个分支和切割的方法来解决任意图表的这个词。我们在Giinnec,等人身上建立。关于树木上的喉部的全部单模(Tu)配方。将该TU配方应用于任意图的关键观察是强制执行一组指数不等式,确保影响传播网络是无环的。我们还为改善其性能的分支和切割程序设计了几种增强功能。我们在现实世界图表中提供了一大集的计算实验,具有高达155 000个节点和327 000个边缘,表明了分支和切割方法的功效。这种分支和切割的方法发现,基于160个现实世界图形实例的测试床,距离最优值平均为1.87%。我们还开发了一个启发式,优先考虑从同龄人接受低影响的节点。这种启发式在任意图中尤其良好地工作,提供平均远离最优性1.99%的解决方案。最后,我们观察到,部分激励可能会降低成本的成本,而平均超过55%,而不允许部分激励措施。

著录项

  • 来源
    《Networks》 |2020年第1期|84-105|共22页
  • 作者单位

    Department of Industrial Engineering Ozyegin University Istanbul Turkey;

    Robert H. Smith School of Business Institute for Systems Research University of Maryland College Park Maryland;

    Leeds School of Business University of Colorado Boulder Colorado;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    exact method; influence maximization; integer programming; strong formulation;

    机译:精确的方法;影响最大化;整数编程;强制配方;

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