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A Query Learning Routing Approach Based on Semantic Clusters

机译:基于语义聚类的查询学习路由方法

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Peer-to-peer systems have recently a remarkable success in the social, academic, and commercial communities. A fundamental problem in Peer-to-Peer systems is how to efficiently locate appropriate peers to answer a specific query (Query Routing Problem). A lot of approaches have been carried out to enhance search result quality as well as to reduce network overhead. Recently, researches focus on methods based on query-oriented routing indices. These methods utilize the historical information of past queries and query hits to build a local knowledge base per peer, which represents the user's interests or profile. When a peer forwards a given query, it evaluates the query against its local knowledge base in order to select a set of relevant peers to whom the query will be routed. Usually, an insufficient number of relevant peers is selected from the current peer's local knowledge base thus a broadcast search is investigated which badly affects the approach efficiency. To tackle this problem, we introduce a novel method that clusters peers having similar interests. It exploits not only the current peer's knowledge base but also that of the others in the cluster to extract relevant peers. We implemented the proposed approach, and tested (i) its retrieval effectiveness in terms of recall and precision, (ii) its search cost in terms of messages traffic and visited peers number. Experimental results show that our approach improves the recall and precision metrics while reducing dramatically messages traffic
机译:对等系统最近在社会,学术和商业社区中都取得了巨大的成功。对等系统中的一个基本问题是如何有效地定位适当的对等点以回答特定的查询(查询路由问题)。已经采取了许多方法来提高搜索结果的质量以及减少网络开销。近来,研究集中在基于面向查询的路由索引的方法上。这些方法利用过去查询和查询命中的历史信息为每个对等点建立本地知识库,该知识库表示用户的兴趣或个人资料。当同级转发给定查询时,它将根据其本地知识库对查询进行评估,以选择将查询路由到的一组相关对等。通常,从当前对等方的本地知识库中选择的相关对等方数量不足,因此对广播搜索进行了调查,这严重影响了进近效率。为了解决这个问题,我们引入了一种新颖的方法来聚类具有相似兴趣的同伴。它不仅利用当前对等方的知识库,而且还利用集群中其他对等方的知识库来提取相关对等方。我们实施了所提出的方法,并测试了(i)就查全率和查准率而言的检索效率,(ii)就消息流量和拜访对等方数目而言的搜索成本。实验结果表明,我们的方法改善了召回率和精确度指标,同时大大减少了消息流量

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