通过先验知识的轻量级强化学习,实现不平衡异构网络下的影响力最大化

IF 5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Complex & Intelligent Systems Pub Date : 2024-11-15 DOI:10.1007/s40747-024-01666-y
Kehong You, Sanyang Liu, Yiguang Bai
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引用次数: 0

摘要

影响最大化(IM)是复杂网络分析领域的一项核心挑战,其主要目标是确定一个预定大小的最优种子集,使影响传播的范围最大化。随着时间的推移,人们提出了许多方法来解决 IM 问题。然而,被称为不平衡异构网络(IHN)的一种特定网络在实现高质量解决方案方面面临着挑战,该网络广泛应用于社会环境、城乡地区和商品销售等领域。在这项工作中,我们引入了具有先验知识的轻量级强化学习算法(LRLP),该算法利用 Struc2Vec 图嵌入技术捕捉节点的结构相似性,为网络内的节点生成向量表示。具体来说,LRLP 将基于一组中心点的先验知识纳入初始经验池,从而加速强化学习训练,以获得更好的解决方案。此外,节点嵌入向量被输入深度 Q 网络(DQN),以开始轻量级训练过程。在合成网络和真实网络上进行的实验评估展示了 LRLP 算法的有效性。值得注意的是,当网络规模较大时,改进效果似乎更加明显。我们还分析了不同图嵌入算法和先验知识对算法结果的影响。此外,我们还对一些参数进行了分析,如种子集选择次数 T、嵌入维度 d 和网络更新频率 C。
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Influence maximization under imbalanced heterogeneous networks via lightweight reinforcement learning with prior knowledge

Influence Maximization (IM) stands as a central challenge within the domain of complex network analysis, with the primary objective of identifying an optimal seed set of a predetermined size that maximizes the reach of influence propagation. Over time, numerous methodologies have been proposed to address the IM problem. However, one certain network referred to as Imbalanced Heterogeneous Networks (IHN), which widely used in social situation, urban and rural areas, and merchandising, presents challenges in achieving high-quality solutions. In this work, we introduce the Lightweight Reinforcement Learning algorithm with Prior knowledge (LRLP), which leverages the Struc2Vec graph embedding technique that captures the structural similarity of nodes to generate vector representations for nodes within the network. In details, LRLP incorporates prior knowledge based on a group of centralities, into the initial experience pool, which accelerates the reinforcement learning training for better solutions. Additionally, the node embedding vectors are input into a Deep Q Network (DQN) to commence the lightweight training process. Experimental evaluations conducted on synthetic and real networks showcase the effectiveness of the LRLP algorithm. Notably, the improvement seems to be more pronounced when the the scale of the network is larger. We also analyze the effect of different graph embedding algorithms and prior knowledge on algorithmic results. Moreover, we conduct an analysis about some parameters, such as number of seed set selections T, embedding dimension d and network update frequency C. It is significant that the reduction of number of seed set selections T not only keeps the quality of solutions, but lowers the algorithm’s computational cost.

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来源期刊
Complex & Intelligent Systems
Complex & Intelligent Systems COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
9.60
自引率
10.30%
发文量
297
期刊介绍: Complex & Intelligent Systems aims to provide a forum for presenting and discussing novel approaches, tools and techniques meant for attaining a cross-fertilization between the broad fields of complex systems, computational simulation, and intelligent analytics and visualization. The transdisciplinary research that the journal focuses on will expand the boundaries of our understanding by investigating the principles and processes that underlie many of the most profound problems facing society today.
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