Improve Searching by Reinforcement Learning in Unstructured P2Ps

Xiuqi Li, Jie Wu
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引用次数: 19

Abstract

Existing searching schemes in unstructured P2Ps can be categorized as either blind or informed. The quality of query results in blind schemes is low. Informed schemes use simple heuristics that lack the theoretical background to support the simulation results. In this paper, we propose to improve searching by reinforcement learning (RL), which has been proven in artificial intelligence to be able to learn the best sequence of actions in order to achieve a certain goal. Our approach, ISRL (intelligent searching by reinforcement learning), aims at locating the best path to desired files at low cost. It explores new paths by forwarding queries to randomly chosen neighbors. It also exploits the paths that have been discovered to reduce the cumulative query cost. Two models of ISRL are proposed: the basic ISRL for finding one desired file, and MP-ISRL (multipath ISRL) for finding multiple desired files. ISRL outperforms existing searching approaches in unstructured P2Ps by achieving higher query quality with less query traffic. The experimental result supports the performance improvement of ISRL.
基于强化学习的非结构化p2p改进搜索
现有的非结构化p2p搜索方案可分为盲目搜索和知情搜索两类。盲方案的查询结果质量较低。知情方案使用简单的启发式,缺乏理论背景来支持模拟结果。在本文中,我们提出通过强化学习(RL)来改进搜索,强化学习在人工智能中已经被证明能够学习最佳的动作序列以达到一定的目标。我们的方法,ISRL(通过强化学习的智能搜索),旨在以低成本找到所需文件的最佳路径。它通过将查询转发给随机选择的邻居来探索新的路径。它还利用已发现的路径来降低累积查询成本。提出了两种ISRL模型:寻找一个目标文件的基本ISRL模型和寻找多个目标文件的MP-ISRL(多路径ISRL)模型。通过以更少的查询流量实现更高的查询质量,ISRL在非结构化p2p中优于现有的搜索方法。实验结果支持了ISRL的性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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