GraMeR: 面向多目标影响力最大化的图元强化学习

IF 3.4 3区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS
Sai Munikoti , Balasubramaniam Natarajan , Mahantesh Halappanavar
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引用次数: 0

摘要

影响最大化(IM)是一个组合问题,即在网络(图)中确定一个种子节点子集,当激活该子集时,在给定的扩散模型和种子集大小预算下,该子集可在网络中提供最大的影响传播。IM 有许多应用,如病毒营销、流行病控制、传感器安置和其他网络相关任务。然而,由于当前算法的计算复杂性,其实际应用受到了限制。最近,人们利用深度强化学习来解决 IM 问题,以减轻计算负担。然而,目前的方法存在严重的局限性,包括只考虑通过传播产生影响而忽略自激活的狭隘 IM 表述、对大型图的可扩展性低、缺乏跨图族的泛化能力,导致每个测试网络的运行时间都很长。在这项研究中,我们采用了一种独特的方法来解决这些局限性,其中包括:(1)将一般的 IM 问题表述为一个马尔可夫决策过程,该过程可同时处理内在激活和影响激活;(2)通过元学习在图族间实现通用性。之前有研究将深度强化学习与图神经网络相结合,但本研究解决的是一个更现实的 IM 问题,并通过元强化学习实现了跨图的通用性。我们在各种标准网络中进行了广泛的实验,以验证所提出的图元强化学习(GraMeR)框架的性能。结果表明,与传统方法相比,GraMeR 在中小型图上的应用速度和通用性要快上数倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GraMeR: Graph Meta Reinforcement learning for multi-objective influence maximization

Influence maximization (IM) is a combinatorial problem of identifying a subset of seed nodes in a network (graph), which when activated, provide a maximal spread of influence in the network for a given diffusion model and a budget for seed set size. IM has numerous applications such as viral marketing, epidemic control, sensor placement and other network-related tasks. However, its practical uses are limited due to the computational complexity of current algorithms. Recently, deep reinforcement learning has been leveraged to solve IM in order to ease the computational burden. However, there are serious limitations in current approaches, including narrow IM formulation that only consider influence via spread and ignore self activation, low scalability to large graphs, and lack of generalizability across graph families leading to a large running time for every test network. In this work, we address these limitations through a unique approach that involves: (1) Formulating a generic IM problem as a Markov decision process that handles both intrinsic and influence activations; (2) incorporating generalizability via meta-learning across graph families. There are previous works that combine deep reinforcement learning with graph neural network but this work solves a more realistic IM problem and incorporates generalizability across graphs via meta reinforcement learning. Extensive experiments are carried out in various standard networks to validate performance of the proposed Graph Meta Reinforcement learning (GraMeR) framework. The results indicate that GraMeR is multiple orders faster and generic than conventional approaches when applied on small to medium scale graphs.

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来源期刊
Journal of Parallel and Distributed Computing
Journal of Parallel and Distributed Computing 工程技术-计算机:理论方法
CiteScore
10.30
自引率
2.60%
发文量
172
审稿时长
12 months
期刊介绍: This international journal is directed to researchers, engineers, educators, managers, programmers, and users of computers who have particular interests in parallel processing and/or distributed computing. The Journal of Parallel and Distributed Computing publishes original research papers and timely review articles on the theory, design, evaluation, and use of parallel and/or distributed computing systems. The journal also features special issues on these topics; again covering the full range from the design to the use of our targeted systems.
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