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Implicit Association via Crowd-sourced Coselection

机译:通过人群源性养成封闭关系

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The interaction of vast numbers of search engine users with sets of search results sets is a potential source of significant quantities of resource classification data. In this paper we discuss work which uses coselection data (i.e. multiple click-through events generated by the same user on a single search engine result page) as an indicator of mutual relevance between web resources and a means for the automatic clustering of sense-singular resources. The results indicate that coselection can be used in this way. We ground-truthed unambiguous query clustering, forming a foundation for work on automatic ambiguity detection based on the resulting number of generated clusters. Using the cluster overlap by population principle, the extension of previous work allowed determination of synonyms or lingual translations where overlapping clusters indicated the mutual relevance in coselection and subsequently the irrelevance of the actual label inherited from the user query.
机译:大量搜索引擎用户与搜索结果集的相互作用设置是大量资源分类数据的潜在来源。在本文中,我们讨论了使用Caselection Data(即,在单个搜索引擎结果页面上同一用户生成的多点球事件)作为Web资源与Sense-Sinchular自动聚类的手段的指示符资源。结果表明可以以这种方式使用益处心。我们判断明确的查询聚类,基于产生的群集数量的自动模糊检测形成了基础。使用群集重叠通过人口原理,允许以前的工作的扩展允许确定重叠群集的同义词或语言翻译,其中重叠群集指示了从用户查询继承的实际标签的互相关性。

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