通过网络科学进行时间序列分析:概念和算法

IF 6.4 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Wiley Interdisciplinary Reviews-Data Mining and Knowledge Discovery Pub Date : 2021-10-11 DOI:10.1002/widm.1404
V. Silva, Maria Eduarda Silva, P. Ribeiro, Fernando M. A. Silva
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引用次数: 25

摘要

如今,在各种类型的现实世界系统中,不断有数据生成和收集。这些数据集通常按时间、空间或两者进行索引,需要适当的方法来分析数据。在单变量环境下,时间序列分析是一个成熟的领域。然而,在多变量环境下,时间序列分析仍然存在许多局限性。为了解决这些问题,过去十年出现了基于网络科学的方法。这些方法包括将初始时间序列数据集转换为一个或多个网络,可以对其进行深入分析,以提供对原始时间序列的洞察。本综述为机器学习、数据挖掘和时间序列领域的研究人员和实践者提供了将时间序列转换为网络的现有映射方法的全面概述。我们的主要贡献是对现有方法进行结构化的回顾,确定它们的主要特征及其差异。我们以统一的方式和语言描述了主要的概念方法,提供了权威的参考,并洞察了它们的优点和局限性。我们首先描述了可以映射到单层网络的单变量时间序列的情况,并根据基本概念:可见性、过渡和接近性划分当前映射。然后我们继续讨论多变量时间序列,包括单层和多层方法。虽然这个研究领域还很新,但它有很大的潜力,通过这项调查,我们打算为未来的研究铺平道路。
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Time series analysis via network science: Concepts and algorithms
There is nowadays a constant flux of data being generated and collected in all types of real world systems. These data sets are often indexed by time, space, or both requiring appropriate approaches to analyze the data. In univariate settings, time series analysis is a mature field. However, in multivariate contexts, time series analysis still presents many limitations. In order to address these issues, the last decade has brought approaches based on network science. These methods involve transforming an initial time series data set into one or more networks, which can be analyzed in depth to provide insight into the original time series. This review provides a comprehensive overview of existing mapping methods for transforming time series into networks for a wide audience of researchers and practitioners in machine learning, data mining, and time series. Our main contribution is a structured review of existing methodologies, identifying their main characteristics, and their differences. We describe the main conceptual approaches, provide authoritative references and give insight into their advantages and limitations in a unified way and language. We first describe the case of univariate time series, which can be mapped to single layer networks, and we divide the current mappings based on the underlying concept: visibility, transition, and proximity. We then proceed with multivariate time series discussing both single layer and multiple layer approaches. Although still very recent, this research area has much potential and with this survey we intend to pave the way for future research on the topic.
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来源期刊
Wiley Interdisciplinary Reviews-Data Mining and Knowledge Discovery
Wiley Interdisciplinary Reviews-Data Mining and Knowledge Discovery COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, THEORY & METHODS
CiteScore
22.70
自引率
2.60%
发文量
39
审稿时长
>12 weeks
期刊介绍: The goals of Wiley Interdisciplinary Reviews-Data Mining and Knowledge Discovery (WIREs DMKD) are multifaceted. Firstly, the journal aims to provide a comprehensive overview of the current state of data mining and knowledge discovery by featuring ongoing reviews authored by leading researchers. Secondly, it seeks to highlight the interdisciplinary nature of the field by presenting articles from diverse perspectives, covering various application areas such as technology, business, healthcare, education, government, society, and culture. Thirdly, WIREs DMKD endeavors to keep pace with the rapid advancements in data mining and knowledge discovery through regular content updates. Lastly, the journal strives to promote active engagement in the field by presenting its accomplishments and challenges in an accessible manner to a broad audience. The content of WIREs DMKD is intended to benefit upper-level undergraduate and postgraduate students, teaching and research professors in academic programs, as well as scientists and research managers in industry.
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