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首页> 外文期刊>International Journal of Parallel, Emergent and Distributed Systems >ISRL: intelligent search by reinforcement learning in unstructured peer-to-peer networks
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ISRL: intelligent search by reinforcement learning in unstructured peer-to-peer networks

机译:ISRL:在非结构化对等网络中通过强化学习进行智能搜索

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Existing searches in unstructured peer-to-peer (P2P) networks are either blind or informed based on simple heuristics. Blind schemes suffer from low query quality. Simple heuristics lack theoretical background to support the simulation results. In this paper, we propose an intelligent searching scheme, called intelligent search by reinforcement learning (ISRL), which systematically seeks the best route to desired files by reinforcement learning (RL). In artificial intelligence, RL has been proven to be able to learn the best sequence of actions to achieve a certain goal. To discover the best path to desired files, ISRL not only explores new paths by forwarding queries to randomly chosen neighbors, but also exploits the paths that have been discovered for reducing the cumulative query cost. We design three models of ISRL: a basic version for finding one desired file, MP-ISRL for finding at least k files, and C-ISRL for reducing maintenance overhead through clustering when there are many queries. ISRL outperforms existing searching approaches in unstructured P2P networks by achieving similar query quality with lower cumulative query cost. The experimental result confirms the performance improvement of ISRL.
机译:非结构化对等(P2P)网络中的现有搜索是盲目的或基于简单的启发式信息。盲目计划的查询质量较低。简单的启发式方法缺乏理论背景来支持仿真结果。在本文中,我们提出了一种智能搜索方案,即通过强化学习(ISRL)进行的智能搜索,该系统通过强化学习(RL)系统地寻求通往所需文件的最佳途径。在人工智能中,RL已被证明能够学习实现特定目标的最佳动作顺序。为了发现通往所需文件的最佳路径,ISRL不仅通过将查询转发给随机选择的邻居来探索新路径,而且还利用已发现的路径来减少累积查询成本。我们设计了三种ISRL模型:用于查找一个所需文件的基本版本,用于查找至少k个文件的MP-ISRL,以及用于在存在许多查询时通过群集减少维护开销的C-ISRL。通过以较低的累积查询成本实现类似的查询质量,ISRL优于非结构化P2P网络中的现有搜索方法。实验结果证实了ISRL的性能提高。

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