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A Knowledge-Driven Architecture for Efficient Resource Discovery in P2P Networks

机译:P2P网络中高效资源发现的知识驱动架构

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As shared electronic data increases, it has become more difficult to manage it successfully and the demand for scalable and efficient mechanisms for managing and retrieving data effectively becomes essential. In this paper amore effective P2P architecture is presented, aiming to improve existing resource discovery processes. The proposed architecture is organised as a hierarchical super-peer structure, where super-peers of the network representnetworkȁ9;s knowledge that is formalised dynamically using its peersȁ9; resources. The main focus of this paper is the creation of an adaptive hierarchical concept-based P2Ptopology using collective intelligence methods. In that process, unmanageable data is transformed into a structured knowledge based repository of semantic resources. Therefore, the network takes the form of an ontology of conceptually related entities of resource information, as provided by the peers. This knowledge driven approach has benefits over traditional load driven architectures, as the user query context is usually the main driver for managing the performance of the network, and in a way the network can be characterised as proactive rather than reactive. A number of experiments have been undertaken and results demonstrate the advantages of the proposed concept-based architecture over other popular architectures.
机译:随着共享电子数据的增加,成功地管理它变得越来越困难,对有效地管理和检索数据的可伸缩和高效机制的需求变得至关重要。本文提出了一种更有效的P2P体系结构,旨在改进现有的资源发现过程。所提出的体系结构被组织为分层的超级对等结构,其中网络的超级对等体表示网络ȁ9;使用其对等体ȁ9动态地形式化的知识;资源。本文的主要重点是使用集体智能方法创建基于分层概念的自适应P2P拓扑。在此过程中,无法处理的数据被转换为基于结构化知识的语义资源存储库。因此,网络采用对等体提供的资源信息的概念上相关实体的本体的形式。这种知识驱动的方法优于传统的负载驱动的体系结构,因为用户查询上下文通常是管理网络性能的主要驱动力,并且可以将网络表征为主动而不是被动。已经进行了许多实验,结果证明了所提出的基于概念的体系结构优于其他流行体系结构的优势。

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