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首页> 外文期刊>Journal of Parallel and Distributed Computing >Fast and low-cost search schemes by exploiting localities in P2P networks
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Fast and low-cost search schemes by exploiting localities in P2P networks

机译:通过利用P2P网络中的位置进行快速且低成本的搜索方案

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摘要

Existing peer-to-peer (P2P) search algorithms generally target either the performance objective of improving search quality from a client's perspective, or the objective of reducing search cost from an Internet management perspective. Most existing work of designing and optimizing search algorithms in unstructured P2P networks addresses the trade-off between the two performance objectives. In contrast, our goal in this study is to attempt to achieve both objectives. Motivated by our observations on the content locality in the peer community and the localities of search interests of individual peers, we propose content-abundant cluster-selectively prefetching indices from responding peers (CAC-SPIRP), a fast and low-cost P2P searching algorithm. Our algorithm consists of two components. The first component aims to reduce the search cost by constructing a CAC, where content-abundant peers self-identify, and self-organize themselves into an inter-connected cluster providing a pool of popular objects to be frequently accessed by the peer community. A query will be first routed to the CAC, and most likely to be satisfied there, significantly reducing the amount of network traffic and the search scope. The second component in our algorithm is client oriented and aims to improve the quality of P2P search, called SPIRP. A client individually identifies a small group of peers who have the same interests as itself to prefetch their entire file indices of the related interests, minimizing unnecessary outgoing queries and significantly reducing query response time. Building SPIRP on the CAC Internet infrastructure, our algorithm combines both merits of the two components to achieve both performance objectives. Our trace-driven simulations show that CAC-SPIRP significantly improves the overall performance from both client's perspective and Internet management perspective.
机译:现有的对等(P2P)搜索算法通常以从客户端的角度提高搜索质量的性能目标或从Internet管理的角度降低搜索成本为目标。在非结构化P2P网络中设计和优化搜索算法的大多数现有工作都解决了两个性能目标之间的折衷问题。相反,我们在这项研究中的目标是试图实现两个目标。基于对同伴社区中内容位置和单个同伴搜索兴趣的位置的观察结果,我们提出了一种从响应对等对象(CAC-SPIRP)中选择内容丰富的群集选择性预取索引的方法,该方法是一种低成本的快速P2P搜索算法。我们的算法由两个部分组成。第一个组件旨在通过构建CAC来降低搜索成本,在CAC上,内容丰富的对等端进行自我标识,并将其自身组织到一个相互连接的群集中,从而提供了对等端社区经常访问的流行对象的池。查询将首先被路由到CAC,并且最有可能在那儿得到满足,从而大大减少了网络流量和搜索范围。我们算法的第二个组件是面向客户的,旨在提高P2P搜索的质量,称为SPIRP。客户端可以单独识别与自己具有相同兴趣的一小部分对等方,以预取相关兴趣的整个文件索引,从而最大程度地减少不必要的传出查询并显着减少查询响应时间。我们的算法在CAC Internet基础架构上构建SPIRP,结合了两个组件的优点和优点,以实现两个性能目标。我们的跟踪驱动模拟表明,从客户角度和Internet管理角度来看,CAC-SPIRP均可显着提高整体性能。

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