基于动态空间数据库的空间共置因果规则挖掘

Junli Lu, Lizhen Wang, Yuan Fang
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引用次数: 4

摘要

空间共位是指空间特征的子集,它们经常在一个地理空间中一起出现。空间同位挖掘是近年来的研究热点。但关于空间共置中隐含的因果规则发现的研究尚未见报道。也许共存环境中的特征偶然地共享了相似的环境,也许它们竞争地生活在同一个环境中,它们本身没有因果关系。因此,从普遍共置的数量中挖掘因果规则更有趣。提出了一种基于动态空间数据库的普遍共置因果规则挖掘算法。由于普遍的共址集合大,一个共址中的规则数量多,发现的计算成本高,因此提出了在可接受的时间内解决问题的剪枝策略。用“真实+合成”数据集对所提出的算法进行了广泛的实验评估,结果表明因果规则仅占共定位规则的60%左右,并且更强大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining causal rules hidden in spatial co-locations based on dynamic spatial databases
Spatial co-locations represent the subsets of spatial features which are frequently located together in a geographic space. Spatial co-location mining has been a research hot in recent years. But the research on causal rule discovery hidden in spatial co-locations has not been reported. Maybe the features in a co-location accidentally share the similar environment, and maybe they are competitively living in the same environment, they themselves have no causal relationships. So mining causal rules in amount of prevalent co-locations is more interesting. This paper proposes a novel algorithm to mine causal rules from prevalent co-locations based on dynamic spatial databases. Because of large collections of prevalent co-locations and amount of rules in one co-location, the computational cost for the discovery is high, thus the pruning strategies are presented to solve the problem in an acceptable period of time. The extensive experiments evaluate the proposed algorithms with “real + synthetic” data sets and the results show that causal rules are just about 60% of co-location rules, and which are more powerful.
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