次模集函数
最大化
中心性
计算机科学
贪婪算法
单调多边形
价值(数学)
节点(物理)
近似算法
功能(生物学)
数学优化
算法
数学
机器学习
统计
结构工程
进化生物学
生物
工程类
几何学
作者
Azadeh Mohammadi,Mohamad Saraee,Abdolreza Mirzaei
标识
DOI:10.1177/0165551515602808
摘要
One of the fundamental issues in social networks is the influence maximization problem, where the goal is to identify a small subset of individuals such that they can trigger the largest number of members in the network. In real-world social networks, the propagation of information from a node to another may incur a certain amount of time delay; moreover, the value of information may decrease over time. So not only the coverage size, but also the propagation speed matters. In this paper, we propose the Time-Sensitive Influence Maximization (TSIM) problem, which takes into account the time dependence of the information value. Considering the time delay aspect, we develop two diffusion models, namely the Delayed Independent Cascade model and the Delayed Linear Threshold model. We show that the TSIM problem is NP-hard under these models but the spread function is monotone and submodular. Thus, a greedy approximation algorithm can achieve a 1 − 1/ e approximation ratio. Moreover, we propose two time-sensitive centrality measures and compare their performance with the greedy algorithm. We evaluate our methods on four real-world datasets. Experimental results show that the proposed algorithms outperform existing methods, which ignore the decay of information value over time.
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