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首页> 外文期刊>Knowledge and Data Engineering, IEEE Transactions on >Effective and Efficient Algorithms for Flexible Aggregate Similarity Search in High Dimensional Spaces
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Effective and Efficient Algorithms for Flexible Aggregate Similarity Search in High Dimensional Spaces

机译:高维空间中灵活的聚合相似度搜索的有效算法

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摘要

Numerous applications in different fields, such as spatial databases, multimedia databases, data mining, and recommender systems, may benefit from efficient and effective aggregate similarity search, also known as aggregate nearest neighbor (AggNN) search. Given a group of query objects , the goal of AggNN is to retrieve the most similar objects from the database, where the underlying similarity measure is defined as an aggregation (usually or ) of the distances between the retrieved objects and every query object in . Recently, the problem was generalized so as to retrieve the objects which are most similar to a fixed proportion of the elements of . This variant of aggregate similarity search is referred to as “flexible AggNN”, or FANN. In this work, we propose two approximation algorithms, one for the variant of FANN, and the other for the variant. Extensive experiments are provided showing that, relative to state-of-the-art approaches (both exact and approximate), our algorithms produce query results with good accuracy, while at the same time being very efficient.
机译:空间数据库,多媒体数据库,数据挖掘和推荐系统等不同领域的大量应用程序可能会受益于高效且有效的集合相似度搜索,也称为集合最近邻(AggNN)搜索。给定一组查询对象,AggNN的目标是从数据库中检索最相似的对象,其中基础的相似性度量定义为所检索的对象与中的每个查询对象之间的距离的集合(通常是或)。最近,问题被普遍化,以检索与元素的固定比例最相似的对象。集合相似度搜索的这种变体称为“弹性AggNN”或FANN。在这项工作中,我们提出了两种近似算法,一种用于FANN的变体,另一种用于变体。提供的大量实验表明,相对于最新方法(精确方法和近似方法),我们的算法产生的查询结果具有较高的准确性,而同时却非常高效。

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