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Ontology based Distributed Personalized Searching for Peer-to-peer architecture using hierarchical neural networks evidence combination

机译:使用分层神经网络证据组合的基于本体的对等体系结构的分布式个性化搜索

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In this paper, we propose a novel ontology based distributed personalized searching method. The user''s information is distributed among the nodes in a peer-to-peer network to reduce the computational costs of the system. The user profile is modeled as a weighted concept hierarchy. We use weighing methods based on the user''s surfing pattern to weigh the concepts in the reference ontology. The ontology is partitioned and each node learns a dimension of the user''s interest using one partition, all partitions together form the user''s profile. The system adapts itself to the changing interests of the user by means of aging. We use hierarchical neural networks to classify the documents into concepts in reference ontology. To overcome the problem of training in cases where insufficient documents are available for a particular concept and to increase the scalability we propose to use two different hierarchical neural network classifiers, each using a different learning function. Their beliefs are combined using Dempster-Shafer theory to eliminate any weaknesses in classification into concepts in the ontology. Our system has an overall performance improvement of around 20%.
机译:在本文中,我们提出了一种新的基于本体的分布式个性化搜索方法。用户的信息分布在点对点网络中的节点中,以降低系统的计算成本。用户配置文件被建模为加权概念层次结构。我们根据用户的冲浪模式使用称重方法来称量参考本体中的概念。本体进行分区,每个节点使用一个分区来使用一个分区来学习用户的兴趣的维度,所有分区一起形成用户的配置文件。该系统通过老化适应用户的变化兴趣。我们使用分层神经网络将文档分类为参考本体中的概念。为了克服训练问题,在特定概念可用的文件不足并增加可扩展性的情况下,我们建议使用两个不同的分层神经网络分类器,每个都使用不同的学习功能。他们的信仰是使用Dempster-Shafer理论相结合的,以消除本体论分类的任何缺点。我们的系统总体性能提高约20%。

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