A probability based algorithm for influence maximization in social networks

Zhen Wang, Zhuzhong Qian, Sanglu Lu
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引用次数: 6

Abstract

In a social network, information runs from word-of-mouth based on the relationship of the users. The influence maximization is to find a limited number of initial users (nodes) to spread the information, so that the maximum number of other users could accept the information, which is a useful technique for marketing, information monitoring and advertising in a social network. Diffusion model of social networks imitates the process of information spreading in social networks, and Independent Cascade (IC) Model and Linear Threshold (LT) Model, are well-known stochastic information influence models. In this paper, we extend the classical IC model according to the observation of users' behaviors in social networks and propose an effective influence maximization algorithm based on this extended IC model. This novel algorithm calculates the influence probability of each node in sub-graphs that other nodes can engendered to it iteratively. The simulation experiments on real social network datasets show that our algorithm is much faster than the greedy hill-climbing algorithm, while the results are very close to the greedy algorithm and out-perform the other heuristic algorithms.
基于概率的社交网络影响力最大化算法
在社交网络中,信息是基于用户关系的口口相传。影响最大化是指找到有限数量的初始用户(节点)来传播信息,使最大数量的其他用户能够接受该信息,这是社交网络中营销、信息监控和广告的一种有用技术。社交网络的扩散模型模拟了信息在社交网络中的传播过程,独立级联模型(IC)和线性阈值模型(LT)是众所周知的随机信息影响模型。本文根据对社交网络中用户行为的观察,对经典IC模型进行了扩展,并在此基础上提出了一种有效的影响力最大化算法。该算法迭代计算子图中每个节点对其他节点可能产生的影响概率。在真实社交网络数据集上的仿真实验表明,我们的算法比贪婪爬坡算法快得多,而结果非常接近贪婪算法,优于其他启发式算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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