持续新兴时空共现模式挖掘:结果综述

Mete Celik, S. Shekhar, James P. Rogers, J. Shine
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引用次数: 30

摘要

持续出现的时空共现模式(SECOPs)代表了在空间和时间上日益集中在一起的对象类型子集。发现SECOPs对于许多应用都很重要,例如,预测新出现的传染病,从部队移动模式预测防御和进攻意图,以及新的捕食者-猎物相互作用。然而,挖掘SECOPs在计算上是非常昂贵的,因为兴趣度量在计算上是复杂的,数据集由于存档历史而更大,候选模式集在对象类型数量上呈指数级增长。提出了一种挖掘SECOP的单调兴趣测度和一种新的SECOP挖掘算法。分析和实验结果表明,该算法正确、完整,计算速度快于相关方法。实验结果还表明,该算法在计算效率上优于朴素算法
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sustained Emerging Spatio-Temporal Co-occurrence Pattern Mining: A Summary of Results
Sustained emerging spatio-temporal co-occurrence patterns (SECOPs) represent subsets of object-types that are increasingly located together in space and time. Discovering SECOPs is important due to many applications, e.g., predicting emerging infectious diseases, predicting defensive and offensive intent from troop movement patterns, and novel predator-prey interactions. However, mining SECOPs is computationally very expensive because the interest measures are computationally complex, datasets are larger due to the archival history, and the set of candidate patterns is exponential in the number of object-types. We propose a monotonic interest measure for mining SECOPs and a novel SECOP mining algorithm. Analytical and experimental results show that the proposed algorithm is correct, complete, and computationally faster than related approaches. Results also show the proposed algorithm is computationally more efficient than naive alternatives
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