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引用次数: 0
摘要
随着社会标签系统的迅速普及以及用户和资源的不断增加,在大众分类法中寻找专家用户和相关资源变得非常困难。本文提出了一种基于二部图的动态排序算法RicoRank (Relevance and Importance inCOrporated RANK),以提高大众分类法的搜索性能。我们将查询相关性和重要性有效地结合起来,生成最终的排名分数。我们从一个平滑的概率生成模型中获得查询相关性,该模型展示了用户兴趣和资源内容。我们用用户和资源之间的相互强化来描述其重要性。我们为每个相互增强的关系分配一个权重,对应于相关标签、用户兴趣和资源内容之间的一致性。最后,我们采用了一个结合查询相关性和重要性的迭代过程,同时计算用户和资源的排名分数。我们在从现实世界系统收集的数据集上进行实验。在用户专业度和资源质量排序方面的实验结果表明,该算法具有令人信服的性能。
Incorporating Relevance and Importance for Dynamic Ranking in Folksonomies
The rapidly increasing popularity of social tagging systems and growing amount of users and resources make it a difficult task to find expert users and relevant resources in folksonomies. In this paper, we propose a bipartite graph-based dynamic ranking algorithm, RicoRank (Relevance and Importance inCOrporated RANK), for improving search performance in folksonomies. We combine both the query relevance and importance effectively to generate the final ranking score. We derive the query relevance from a smoothed probabilistic generative model that demonstrates user interest and resource content. We characterize the importance with the mutual reinforcement between users and resources. We assign each mutual reinforcing relation with a weight corresponding to the coherence between the associated tags, the user interest and the resource content. Finally, we employ an iterative procedure, which incorporates well with both query relevance and importance, to simultaneously compute the ranking scores of users and resource. We conduct experiments on a dataset collected from a real-world system. Experimental results on both user expertise and resource quality ranking show a convincing performance of the proposed algorithm.