MAMCost: Global and Local Estimates leading to Robust Cost Estimation of Similarity Queries

Gisele Busichia Baioco, A. Traina, C. Traina
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引用次数: 17

Abstract

This paper presents an effective cost model to estimate the number of disk accesses (I/O cost) and the number of distance calculations (CPU cost) to process similarity queries over data indexed by metric access methods. Two types of similarity queries were taken into consideration: range and k-nearest neighbor queries. The main point of the cost model is considering not only global parameters of the data set but also the local data distribution. The model takes advantage of the intrinsic dimension of the data set, estimated by its correlation fractal dimension. Experiments were performed on real and synthetic data sets, with different sizes and dimensions, in order to validate the proposed model. They confirmed that the estimations are accurate, within the range achieved by real queries.
MAMCost:全局和局部估计导致相似查询的鲁棒成本估计
本文提出了一个有效的成本模型来估计磁盘访问次数(I/O成本)和距离计算次数(CPU成本),以处理由度量访问方法索引的数据的相似性查询。考虑了两种类型的相似性查询:范围查询和k近邻查询。成本模型的要点在于既考虑了数据集的全局参数,又考虑了局部数据的分布。该模型利用数据集的固有维数,通过其相关分形维数来估计。在不同大小和维度的真实数据集和合成数据集上进行了实验,以验证所提出的模型。他们证实,估计是准确的,在实际查询所达到的范围内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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