P2P搜索的强化学习

L. Gatani, G. Re, A. Urso, S. Gaglio
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引用次数: 6

摘要

对于存储大量数据的P2P系统,高效、可扩展的资源共享搜索是其实际使用的关键决定因素。非结构化的P2P网络避免了集中式系统的限制和高度结构化方法的缺点,因为它们对拓扑和数据放置施加的约束很少,并且它们支持高度通用的搜索机制。然而,他们的搜索算法通常基于简单的泛洪方案,显示出严重的低效率。在本文中,为了解决这一主要限制,我们提出并评估了一种本地自适应路由协议的采用。路由算法采用一种简单的强化学习方案(由邻居之间的查询交互驱动),以动态地调整拓扑以适应邻居的兴趣。初步评价表明,该方法能够将具有共同兴趣的节点动态分组,并组织成一个小世界网络。
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Reinforcement Learning for P2P Searching
For a peer-to-peer (P2P) system holding massive amount of data, an efficient and scalable search for resource sharing is a key determinant to its practical usage. Unstructured P2P networks avoid the limitations of centralized systems and the drawbacks of a highly structured approach, because they impose few constraints on topology and data placement, and they support highly versatile search mechanisms. However their search algorithms are usually based on simple flooding schemes, showing severe inefficiencies. In this paper, to address this major limitation, we propose and evaluate the adoption of a local adaptive routing protocol. The routing algorithm adopts a simple Reinforcement Learning scheme (driven by query interactions among neighbors), in order to dynamically adapt the topology to peer interests. Preliminaries evaluations show that the approach is able to dynamically group peer nodes in clusters containing peers with shared interests and organized into a small world network.
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PGAC: A Parallel Genetic Algorithm for Data Clustering Reinforcement Learning for P2P Searching
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