Search result presentation based on faceted clustering

Benno Stein, Tim Gollub, Dennis Hoppe
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引用次数: 5

Abstract

We propose a competence partitioning strategy for Web search result presentation: the unmodified head of a ranked result list is combined with a clustering of documents from the result list tail. We identify two principles to which such a clustering must adhere to improve the user's search experience: (1) Avoid the unwanted effect of query aspect repetition, which is called shadowing here. (2) Avoid extreme clusterings, i.e., neither the number of cluster labels nor the number of documents per cluster should exceed the size of the result list head. We present measures to quantify the shadowing effect, and with Faceted Clustering we introduce an algorithm that optimizes the identified principles. The key idea of Faceted Clustering is a dynamic, user-controlled reorganization of a clustering, similar to a faceted navigation system. We report on evaluations using the AMBIENT corpus and demonstrate the potential of our approach by a comparison with two well-known clustering search engines.
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基于分面聚类的搜索结果表示
我们提出了一种Web搜索结果表示的能力划分策略:将排序结果列表中未修改的头部与结果列表尾部的文档聚类相结合。我们确定了这样的聚类必须遵循的两个原则,以改善用户的搜索体验:(1)避免查询方面重复的不必要影响,在这里称为阴影。(2)避免极端聚类,即集群标签的数量和每个集群的文档数量都不应超过结果列表头的大小。我们提出了量化阴影效应的措施,并通过分面聚类引入了一种优化已确定原则的算法。分面聚类的关键思想是动态的、用户控制的聚类重组,类似于分面导航系统。我们报告了使用AMBIENT语料库的评估,并通过与两个知名的聚类搜索引擎进行比较来展示我们的方法的潜力。
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