计算机科学
可视化
抽象
数据挖掘
代表(政治)
系列(地层学)
领域(数学)
数据可视化
表(数据库)
班级(哲学)
创造性可视化
时间序列
外部数据表示
情报检索
机器学习
人工智能
数学
认识论
政治
哲学
生物
古生物学
法学
纯数学
政治学
作者
Georgiy Shurkhovetskyy,Natalia Andrienko,Gennady Andrienko,Georg Fuchs
摘要
Abstract Numeric time series is a class of data consisting of chronologically ordered observations represented by numeric values. Much of the data in various domains, such as financial, medical and scientific, are represented in the form of time series. To cope with the increasing sizes of datasets, numerous approaches for abstracting large temporal data are developed in the area of data mining. Many of them proved to be useful for time series visualization. However, despite the existence of numerous surveys on time series mining and visualization, there is no comprehensive classification of the existing methods based on the needs of visualization designers. We propose a classification framework that defines essential criteria for selecting an abstraction method with an eye to subsequent visualization and support of users' analysis tasks. We show that approaches developed in the data mining field are capable of creating representations that are useful for visualizing time series data. We evaluate these methods in terms of the defined criteria and provide a summary table that can be easily used for selecting suitable abstraction methods depending on data properties, desirable form of representation, behaviour features to be studied, required accuracy and level of detail, and the necessity of efficient search and querying. We also indicate directions for possible extension of the proposed classification framework.
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