检测时空数据集中周期性模式的高效概率算法

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Big Data and Cognitive Computing Pub Date : 2024-06-03 DOI:10.3390/bdcc8060059
Claudio Gutiérrez-Soto, Patricio Galdames, Marco A. Palomino
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引用次数: 0

摘要

对于研究人员和从业人员来说,从数据中获得洞察力是一项具有挑战性的任务,尤其是在研究时空领域时。如果涉及模式搜索,时间数据维度带来的复杂性会造成额外的障碍,因为传统的数据挖掘技术不足以处理时空数据库(STDB)。我们在此提出一种新算法,我们称之为 F1/FP,它可以说是 Minus-F1 算法的概率版本,用于寻找周期性模式。据我们所知,以前的研究还没有比较过文献中引用最多的寻找周期性模式的算法,即 Apriori、MS-Apriori、FP-Growth、Max-Subpattern 和 PPA。因此,我们进行了这样的比较,然后使用两个数据集对我们的算法进行了实证评估,展示了它处理不同类型的周期性和数据分布的能力。通过这种全面的比较分析,我们证明了我们新提出的算法比现有的替代算法复杂度更小,而且无论数据集大小如何,都能加快性能。我们期待我们的工作能为天文数据的挖掘以及从社交媒体中不断增长的在线数据流做出巨大贡献。
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An Efficient Probabilistic Algorithm to Detect Periodic Patterns in Spatio-Temporal Datasets
Deriving insight from data is a challenging task for researchers and practitioners, especially when working on spatio-temporal domains. If pattern searching is involved, the complications introduced by temporal data dimensions create additional obstacles, as traditional data mining techniques are insufficient to address spatio-temporal databases (STDBs). We hereby present a new algorithm, which we refer to as F1/FP, and can be described as a probabilistic version of the Minus-F1 algorithm to look for periodic patterns. To the best of our knowledge, no previous work has compared the most cited algorithms in the literature to look for periodic patterns—namely, Apriori, MS-Apriori, FP-Growth, Max-Subpattern, and PPA. Thus, we have carried out such comparisons and then evaluated our algorithm empirically using two datasets, showcasing its ability to handle different types of periodicity and data distributions. By conducting such a comprehensive comparative analysis, we have demonstrated that our newly proposed algorithm has a smaller complexity than the existing alternatives and speeds up the performance regardless of the size of the dataset. We expect our work to contribute greatly to the mining of astronomical data and the permanently growing online streams derived from social media.
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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