论文标题

对影响最大化的调查:来自基于ML的组合优化

A Survey on Influence Maximization: From an ML-Based Combinatorial Optimization

论文作者

Li, Yandi, Gao, Haobo, Gao, Yunxuan, Guo, Jianxiong, Wu, Weili

论文摘要

影响最大化(IM)是一个经典的组合优化问题,可以在移动网络,社交计算和推荐系统中广泛使用。它旨在选择少数用户,以最大程度地利用跨在线社交网络的影响。由于其潜在的商业和学术价值,有很多研究人员从不同的角度研究IM问题。主要的挑战来自IM问题的NP硬度和估计影响传播的\#p-hard,因此,克服它们的传统算法可以分为两个类别:启发式算法和近似算法。但是,启发式算法没有理论保证,理论设计接近极限。因此,几乎不可能进一步优化和提高其性能。随着人工智能的快速发展,基于机器学习(ML)的技术在许多领域都取得了非凡的成就。鉴于这一点,近年来,已经出现了许多新方法来通过使用基于ML的技术解决组合优化问题。这些方法具有快速求解速度和强大的概括能力的优势,该图形为解决组合优化问题提供了全新的方向。因此,我们基于迭代搜索并回顾了基于ML的方法,尤其是深度强化学习的最新发展,以解决社交网络中的IM问题和其他变体,放弃了传统算法。我们专注于总结相关的背景知识,基本原理,常见方法和应用研究。最后,指出了在未来的IM研究中需要紧急解决的挑战。

Influence Maximization (IM) is a classical combinatorial optimization problem, which can be widely used in mobile networks, social computing, and recommendation systems. It aims at selecting a small number of users such that maximizing the influence spread across the online social network. Because of its potential commercial and academic value, there are a lot of researchers focusing on studying the IM problem from different perspectives. The main challenge comes from the NP-hardness of the IM problem and \#P-hardness of estimating the influence spread, thus traditional algorithms for overcoming them can be categorized into two classes: heuristic algorithms and approximation algorithms. However, there is no theoretical guarantee for heuristic algorithms, and the theoretical design is close to the limit. Therefore, it is almost impossible to further optimize and improve their performance. With the rapid development of artificial intelligence, the technology based on Machine Learning (ML) has achieved remarkable achievements in many fields. In view of this, in recent years, a number of new methods have emerged to solve combinatorial optimization problems by using ML-based techniques. These methods have the advantages of fast solving speed and strong generalization ability to unknown graphs, which provide a brand-new direction for solving combinatorial optimization problems. Therefore, we abandon the traditional algorithms based on iterative search and review the recent development of ML-based methods, especially Deep Reinforcement Learning, to solve the IM problem and other variants in social networks. We focus on summarizing the relevant background knowledge, basic principles, common methods, and applied research. Finally, the challenges that need to be solved urgently in future IM research are pointed out.

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