Top-k query processing for combinatorial objects using Euclidean distance

Takanobu Suzuki, A. Takasu, J. Adachi
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引用次数: 3

Abstract

Conventional search techniques are mainly designed to return a ranked list of single objects that are relevant to a given query. However, they do not meet the criteria for retrieving a combination of objects that is close to the query. This paper presents top-k query processing in which Euclidean distance is used as the scoring function for combinatorial objects. We also propose a pruning method based on clustering and efficiently select object combinations by pruning clusters that do not contain potential candidates for the top-k results. We compared the proposed method with the method that enumerates all the combinatorial objects and calculates the distance to the query. Experimental results revealed that the proposed method improves the processing efficiency to about 95% at maximum.
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基于欧氏距离的组合对象Top-k查询处理
传统的搜索技术主要用于返回与给定查询相关的单个对象的排序列表。但是,它们不满足检索接近查询的对象组合的标准。本文提出了用欧氏距离作为组合对象评分函数的top-k查询处理方法。我们还提出了一种基于聚类的修剪方法,通过修剪不包含top-k结果的潜在候选簇来有效地选择对象组合。我们将提出的方法与枚举所有组合对象并计算到查询的距离的方法进行了比较。实验结果表明,该方法的处理效率最高可达95%左右。
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