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A Resource Recommendation Method Based on User Taste Diffusion Model in Folksonomies

机译:基于用户口味扩散模型的民俗分类资源推荐方法

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摘要

Collaborative tagging has been very popular with the development of the Web 2.0, which helps users manage, share and utilize resources effectively. For various kinds of resources, the way to recommend appropriate resources to right users is the key problem in tagging system. This paper proposes a user taste diffusion model based on the tripartite hypergraph to deal with the tri-relation of user-resource-tag in folksonomies and the data sparsity problem in personalized recommendation. Through the defined tri-relation model and diffusion probability matrix, the user's taste is diffused from itself to other users, resources and tags. When diffusion stops, the candidate resources can be identified then be ranked according to the taste values. As a result the top resources that have not been collected by the given user are selected as the final recommendations. Benefiting from the introduction of iterative diffusion mechanism, the recommendation results not only cover the resources collected by the given user's direct neighbors but also cover the ones which are collected by his/her extended neighbors. Experimental results show that our method performs better in terms of precision and recall than other recommendation methods.
机译:随着Web 2.0的发展,协作标记已非常流行,它可以帮助用户有效地管理,共享和利用资源。对于各种资源,向合适的用户推荐适当资源的方法是标记系统的关键问题。提出了一种基于三方超图的用户品味扩散模型,以解决民俗分类中用户资源标签的三重关系和个性化推荐中的数据稀疏性问题。通过定义的三关系模型和扩散概率矩阵,用户的品味从自身扩散到其他用户,资源和标签。当扩散停止时,可以识别候选资源,然后根据口味值进行排序。结果,未由给定用户收集的顶级资源被选择为最终推荐。受益于迭代扩散机制的引入,推荐结果不仅涵盖给定用户的直接邻居收集的资源,还涵盖他/她的扩展邻居收集的资源。实验结果表明,与其他推荐方法相比,我们的方法在准确性和查全率方面表现更好。

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