一种基于聚类分支的高效协同定位模式逼近算法

Duan Duanping
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引用次数: 0

摘要

空间共定位模式表示一组空间特征,这些特征的实例经常在空间中关联。然而,由于传统算法的指数时间复杂度,使得算法的运算效率不高,特别是面对海量数据挖掘时,无法正常完成挖掘任务。为此,提出了一种高效的共定位模式近似算法。该算法首先根据特征实例进行聚类,以每个中心作为新的实例坐标,并关联每个族的实例个数。在此基础上,将矿区划分为分支,行距采用距离阈值,从而达到快速剪枝的目的。该算法在保证高精度的前提下,有效解决了传统算法的效率问题,有效解决了海量数据的空间协同模式挖掘问题。大量实验表明,新算法具有效率高、稳定性好、精度高等优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Co-location Pattern Approximation Algorithm Based on Clustering Branches
The spatial co-location pattern represents a set of spatial features, whose instances are frequently associated in the space. However, due to the exponential time complexity of the traditional algorithm, the operation efficiency of the algorithm is not high, especially in the face of massive data mining, it is unable to complete the mining task normally. Therefore, an efficient co-location pattern approximation algorithm is proposed. The new algorithm first clusters according to the feature instances, takes each center as the new instance coordinates, and associates the number of instances of each family. On this basis, the mining area is divided into branches, and the distance threshold is taken for the row spacing, so as to achieve the purpose of fast pruning. On the premise of ensuring high accuracy, the algorithm effectively solves the efficiency problem of traditional algorithms, and effectively solves the spatial colocation pattern mining of massive data. A large number of experiments show that the new algorithm has the advantages of high efficiency, stability and high accuracy.
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