时空数据挖掘问题与方法

Eleftheria Koutsaki, George Vardakis, N. Papadakis
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引用次数: 0

摘要

许多科学领域对时空数据的提取和处理表现出极大的兴趣,如医学对流行病学和神经病学、地质学、社会科学、气象学的重视,对交通运输的研究也表现出极大的兴趣。时空数据与空间数据有很大的不同,因为时空数据是指测量结果,它考虑了接收数据的地点和时间,并具有各自的特征,而空间数据是指和描述仅与地点相关的信息。时空数据挖掘带来的创新在许多科学领域引发了一场革命,这是因为通过它,我们现在可以通过预测学习为复杂问题提供解决方案和答案,以及提供有用和有价值的预测。然而,在数据挖掘中结合时间和地点提出了必须克服的重大挑战和困难。时空数据挖掘与分析是一种相对较新的数据挖掘方法,近十年来得到了较为系统的研究。本文的目的是为时空数据提供一个很好的介绍,并通过这种详细的描述,我们试图引入描述性逻辑,并获得这些数据的完整知识。我们的目标是引入一种描述它们的新方法,针对未来的研究,通过将数据类型产生的表达式,使用描述性逻辑,与可以导出的新表达式相结合,以非常精确的方式描述对象和环境的未来状态,提供准确的预测。为了突出时空数据的价值,我们在引言中对ST数据进行了简要的描述。我们描述了迄今为止开展的相关工作,时空(ST)数据的类型,它们的属性以及它们之间可以进行的转换,在很小的程度上,尝试使用描述性逻辑引入约束和规则,在最初呈现ST数据时,按类型将描述性逻辑引入时空数据。然后描述了物种的数据快照和案例之间的相似性。我们描述了方法,介绍了聚类、动态ST聚类、预测学习、模式挖掘频率和模式出现,以及异常检测、识别观察对象行为变化的时间点以及它们之间关系的发展等问题。我们描述了目前ST数据在各个领域的应用,以及未来的工作。我们最后总结了我们的结论,时空数据的表示和研究可以与所有自然现象的其他属性相结合,通过适当的处理,得出关于问题研究的安全结论,并且通过准确确定环境或对象的未来状态,在提取预测方面也具有很高的精度。因此,温度数据的重要性使它们在今天的各个科学领域特别有价值,它们的提取是未来特别苛刻的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatiotemporal Data Mining Problems and Methods
Many scientific fields show great interest in the extraction and processing of spatiotemporal data, such as medicine with an emphasis on epidemiology and neurology, geology, social sciences, meteorology, and a great interest is also observed in the study of transport. Spatiotemporal data differ significantly from spatial data, since spatiotemporal data refer to measurements, which take into account both the place and the time in which they are received, with their respective characteristics, while spatial data refer to and describe information related only to place. The innovation brought about by spatiotemporal data mining has caused a revolution in many scientific fields, and this is because through it we can now provide solutions and answers to complex problems, as well as provide useful and valuable predictions, through predictive learning. However, combining time and place in data mining presents significant challenges and difficulties that must be overcome. Spatiotemporal data mining and analysis is a relatively new approach to data mining which has been studied more systematically in the last decade. The purpose of this article is to provide a good introduction to spatiotemporal data, and through this detailed description, we attempt to introduce descriptive logic and gain a complete knowledge of these data. We aim to introduce a new way of describing them, aiming for future studies, by combining the expressions that arise by type of data, using descriptive logic, with new expressions, that can be derived, to describe future states of objects and environments with great precision, providing accurate predictions. In order to highlight the value of spatiotemporal data, we proceed to give a brief description of ST data in the introduction. We describe the relevant work carried out to date, the types of spatiotemporal (ST) data, their properties and the transformations that can be made between them, attempting, to a small extent, to introduce constraints and rules using descriptive logic, introducing descriptive logic into spatiotemporal data by type, when initially presenting the ST data. The data snapshots by species and similarities between the cases are then described. We describe methods, introducing clustering, dynamic ST clusters, predictive learning, pattern mining frequency, and pattern emergence, and problems such as anomaly detection, identifying time points of changes in the behavior of the observed object, and development of relationships between them. We describe the application of ST data in various fields today, as well as the future work. We finally conclude with our conclusions, with the representation and study of spatiotemporal data can, in combination with other properties which accompany all natural phenomena, through their appropriate processing, lead to safe conclusions regarding the study of problems, and also with great precision in the extraction of predictions by accurately determining future states of an environment or an object. Thus, the importance of ST data makes them particularly valuable today in various scientific fields, and their extraction is a particularly demanding challenge for the future.
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