Spatial Negative Co-Location Pattern Directional Mining Algorithm with Join-Based Prevalence

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Abstract

It is usually difficult for prevalent negative co-location patterns to be mined and calcu-lated. This paper proposes a join-based prevalent negative co-location mining algorithm, which can quickly and effectively mine all the prevalent negative co-location patterns in spatial data. Firstly, this paper verifies the monotonic nondecreasing property of the negative co-location participation index (PI) value as the size increases. Secondly, using this property, it is deduced that any prevalent negative co-location pattern with size n can be generated by connecting prevalent co-location with size 2 and with an n−1 size candidate negative co-location pattern or an n−1 size prevalent positive co-location pattern. Finally, the experiment results demonstrate that while other conditions are fixed, the proposed algorithm has an excellent efficiency level. The algorithm can eliminate the 90% useless negative co-location pattern maximumly and eliminate the useless 40% negative co-location pattern averagely.

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APA

Zhou, G., Wang, Z., & Li, Q. (2022). Spatial Negative Co-Location Pattern Directional Mining Algorithm with Join-Based Prevalence. Remote Sensing, 14(9). https://doi.org/10.3390/rs14092103

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