Competitive influence maximisation model with monetary incentive

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS
Nadia Niknami, Jie Wu
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引用次数: 2

Abstract

ABSTRACT The spreading of information in social networks can be modelled as a process of diffusing information with a probability from its source to its neighbours. There is a challenge in the real world where competing companies implement their strategies to gain influence in the same social network at the same time. To effectively control the spreading of processes within the network, the effective use of limited resources is of prime importance. When budgets are fixed, competitors will search for a set of seed members to diffuse influence and maximise the number of members that are affected. Each competitor seeks to maximise its influence by investing in the most influential members in the given social network. In this paper, we utilise the Colonel Blotto game to help competitors figure out how many resources should be allocated to influential nodes to increase the influences on nodes. This is done while also taking into account that competing campaigns are trying to do the same thing. We propose a Max-Influence-Independent-Set (MIIS) algorithm to determine the most influential independent set and find the optimal investment to gain maximum influence in the given social network. The effectiveness of this approach is evaluated under different parameter values, namely probability distributions, topologies, and density. GRAPHICAL ABSTRACT
具有货币激励的竞争影响力最大化模型
摘要信息在社交网络中的传播可以被建模为一个从信息源向邻居传播信息的过程。现实世界中存在着一个挑战,即竞争公司实施其战略,同时在同一社交网络中获得影响力。为了有效控制流程在网络中的传播,有效利用有限的资源至关重要。当预算固定时,竞争对手将寻找一组种子成员来分散影响力,并最大限度地增加受影响的成员数量。每个竞争对手都试图通过投资于特定社交网络中最有影响力的成员来最大限度地提高自己的影响力。在本文中,我们利用Colonel Blotto游戏来帮助竞争对手计算出应该向有影响力的节点分配多少资源,以增加对节点的影响。这样做的同时也考虑到竞争对手也在试图做同样的事情。我们提出了一种最大影响力独立集(MIIS)算法来确定最具影响力的独立集,并找到在给定社交网络中获得最大影响力的最佳投资。该方法的有效性在不同的参数值下进行评估,即概率分布、拓扑结构和密度。图形摘要
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
27
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