首页> 外文会议>Geoscience and Remote Sensing Symposium, 2005. IGARSS '05. Proceedings. 2005 IEEE International >Detecting spatio-temporal outliers in climate dataset: a method study
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Detecting spatio-temporal outliers in climate dataset: a method study

机译:在气候数据集中检测时空异常:方法研究

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Outlier detecting is one of the most important data analysis technologies in data mining, which can be used to discover anomalous phenomena in huge dataset. Many literatures on spatial outlier detecting and time series outlier detecting have appeared, while the area of spatio-temporal outliers considering both spatial and temporal dimensions has still rarely been touched. Defining outliers in traditional dataset is more explicit because the data structure we need to focus on is very straightforward (e.g., a spatial point or a transaction record). However, it is much more difficult to give outlier a definite characterization in spatio-temporal lattice data, since there are so many data structures we can pay attention to. With the aim of detecting useful and meaningful outliers in climate dataset, we introduce a formalized way to define outliers in spatio-temporal lattice data, in which the importance of clarifying basic data structure (we call it basic element in our paper) is stressed. As a case study, we define two kinds of spatio-temporal outliers based on a global climate dataset, according to the three aspects we propose in defining an outlier. The introduction of basic element and the formulation of outlier definition process make it easier and clearer to define meaningful outliers. Thus outlier detecting in spatio-temporal lattice data will provide us with really interesting and useful knowledge.
机译:离群检测是数据挖掘中最重要的数据分析技术之一,可用于发现巨大数据集中的异常现象。关于空间离群值检测和时间序列离群值检测的许多文献已经出现,而同时考虑到空间和时间维度的时空离群值区域仍然很少被触及。在传统数据集中定义异常值更为明确,因为我们需要关注的数据结构非常简单(例如,空间点或交易记录)。但是,要在时空点阵数据中对异常值进行明确的描述要困难得多,因为有很多数据结构需要我们注意。为了检测气候数据集中有用且有意义的离群值,我们引入了一种形式化的方法来定义时空格网数据中的离群值,其中强调了阐明基本数据结构(在本文中称为基本元素)的重要性。作为案例研究,根据定义异常值的三个方面,我们基于全球气候数据集定义了两种时空异常值。基本元素的引入和离群点定义过程的制定使定义有意义的离群点变得更加容易和清晰。因此,时空点阵数据中的异常值检测将为我们提供真正有趣且有用的知识。

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