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Efficient Network Aware Search in Collaborative Tagging Sites

机译:协作标记站点中的有效网络感知搜索

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The popularity of collaborative tagging sites presents a unique opportunity to explore keyword search in a context where query results are determined by the opinion of a network of taggers related to a seeker. In this paper, we present the first in-depth study of network-aware search. We investigate efficient top-κ processing when the score of an answer is computed as its popularity among members of a seeker's network. We argue that obvious adaptations of top-κ algorithms are too space-intensive, due to the dependence of scores on the seeker's network. We therefore develop algorithms based on maintaining score upper-bounds. The global upper-bound approach maintains a single score upper-bound for every pair of item and tag, over the entire collection of users. The resulting bounds are very coarse. We thus investigate clustering seekers based on similar behavior of their networks. We show that finding the optimal clustering of seekers is intractable, but we provide heuristic methods that give substantial time improvements. We then give an optimization that can benefit smaller populations of seekers based on clustering of taggers. Our results are supported by extensive experiments on del.icio.us datasets.
机译:协作标记站点的流行为在查询结果由与搜索者相关的标记者网络的意见确定的上下文中探索关键字搜索提供了独特的机会。在本文中,我们将对网络感知搜索进行首次深入研究。当答案的分数被计算为在寻求者网络的成员中的受欢迎程度时,我们将研究有效的top-κ处理。我们认为,由于得分对搜寻者网络的依赖性,top-κ算法的明显改编过于占用空间。因此,我们基于维护分数上限来开发算法。全局上限方法在整个用户集合中为每对商品和标签维护一个单一的得分上限。得出的边界非常粗糙。因此,我们基于网络的相似行为来研究聚类搜索器。我们显示出寻找寻优者的最佳聚类是很棘手的,但是我们提供了启发式方法,可以极大地改善时间。然后,我们根据标记器的聚类给出一个可以使较小数量的搜索者受益的优化方法。我们的结果得到了del.icio.us数据集广泛实验的支持。

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