Affiliation:
1. School of Mathematics and Applied Statistics University of Wollongong New South Wales Australia
2. Agriculture and Agri‐Food Canada Summerland Research and Development Centre British Columbia Canada
3. Department of Mathematics Trent University Ontario Canada
Abstract
SummaryEnvironmental 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 strands of research that appear in the contributions to Part 1, which largely focus on statistical methodology. These include temporal, spatial and spatio‐temporal modeling; statistical computing; machine learning and artificial intelligence; and the critical question of decision‐making in the presence of uncertainty. This editorial complements that of Part 2, which largely focuses on applications; see Burr, Newlands, and Zammit‐Mangion (2023).
Subject
Ecological Modeling,Statistics and Probability
Cited by
1 articles.
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