环境数据科学:第2部分

IF 1.5 3区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES Environmetrics Pub Date : 2023-02-16 DOI:10.1002/env.2788
Wesley S. Burr, Nathaniel K. Newlands, Andrew Zammit-Mangion
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引用次数: 0

摘要

环境数据科学是一个集统计学、机器学习、信息技术、气候与环境科学于一体的多学科、成熟的研究领域。由两部分组成的特刊《环境数据科学》包括一系列研究文章和观点文章,由该领域的前沿统计学家领导。这篇社论确定并讨论了第2部分的贡献中出现的常见研究主题,该部分侧重于应用。其中包括时空建模;聚集和稀疏采样问题;社区建设和培训下一代环境数据科学专家的重要性;以及展望学科未来挑战的必要性。这篇社论补充了第1部分的社论,该部分主要侧重于统计方法;参见Zammit Mangion、Newlands和Burr(2023)。
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Environmental data science: Part 2

Environmental data science is a multi-disciplinary and mature field of research at the interface of statistics, machine learning, information technology, climate and environmental science. The two-part special issue ‘Environmental Data Science’ comprises a set of research articles and opinion pieces led by statisticians who are at the forefront of the field. This editorial identifies and discusses common research themes that appear in the contributions to Part 2, which focuses on applications. These include spatio-temporal modeling; the problem of aggregation and sparse sampling; the importance of community-building and training for the next generation of specialists in environmental data science; and the need to look forward at the challenges that lie ahead for the discipline. This editorial complements that of Part 1, which largely focuses on statistical methodology; see Zammit-Mangion, Newlands, and Burr (2023).

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来源期刊
Environmetrics
Environmetrics 环境科学-环境科学
CiteScore
2.90
自引率
17.60%
发文量
67
审稿时长
18-36 weeks
期刊介绍: Environmetrics, the official journal of The International Environmetrics Society (TIES), an Association of the International Statistical Institute, is devoted to the dissemination of high-quality quantitative research in the environmental sciences. The journal welcomes pertinent and innovative submissions from quantitative disciplines developing new statistical and mathematical techniques, methods, and theories that solve modern environmental problems. Articles must proffer substantive, new statistical or mathematical advances to answer important scientific questions in the environmental sciences, or must develop novel or enhanced statistical methodology with clear applications to environmental science. New methods should be illustrated with recent environmental data.
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