影响转移:跨网络有效影响最大化的监督学习

Qingbo Hu, Guan Wang, Philip S. Yu
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引用次数: 5

摘要

如何通过社交网络最大化影响力是现实生活中许多重要应用背后的关键挑战。例如,营销人员感兴趣的是如何利用有限的资源来推广一种被消费者广泛认可的新产品。近年来,研究人员进行了大量的研究,以解决单网络场景下这个有趣的问题。就实现的影响规模而言,最佳解决方案是基于耗时的蒙特卡罗(MC)模拟的贪心算法。然而,它不能扩展到大规模的社交网络或针对多个网络的场景。在对三个真实网络进行研究的基础上,提出了一种创新的迁移影响学习(TIL)方法,并对贪婪算法产生的结果的网络特征进行了统计。该方法使用监督学习技术,有效地最大化跨多个网络的影响。一旦在一个网络上得到贪婪算法的结果,TIL算法就可以避免在其他网络上完全使用MC模拟,从而使算法运行速度非常快。实验表明,与贪婪算法的结果相比,本文提出的TIL算法能够在更快的时间内生成具有封闭尺度的扩散,并且优于其他一些最先进的启发式算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transferring influence: Supervised learning for efficient influence maximization across networks
How to maximize influence through social networks is a key challenge behind many important applications in real life. For instance, marketers are interested in how to use limited resource to promote a new product as widely recognized by consumers. In recent years, researchers have conducted numerous studies to conquer this intriguing problem in single network scenario. In terms of the scale of achieved influence, the best solution is a greedy algorithm based on time-consuming Monte Carlo (MC) simulation. However, it is not scalable to large-scale social networks or the scenario of targeting multiple networks.We propose an innovative Transfer Influence Learning (TIL) method based on the study on three real networks, as well as statistics on network features of results generated by the greedy algorithm. The proposed method uses supervised learning technique to efficiently maximize influence across multiple networks. Once having the result of the greedy algorithm in one network, the TIL algorithm can avoid using MC simulation completely on other networks, which enables the algorithm to run very fast. The experiments show that the proposed TIL algorithm is able to generate a diffusion with closed scale comparing to the result of the greedy algorithm within a much faster time, while outperforms some other state-of-art heuristic algorithms.
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