Assessing predictability of environmental time series with statistical and machine learning models

Author:

Bonas Matthew1ORCID,Datta Abhirup2,Wikle Christopher K.3ORCID,Boone Edward L.4ORCID,Alamri Faten S.5,Hari Bhava Vyasa6,Kavila Indulekha7ORCID,Simmons Susan J.8,Jarvis Shannon M.9ORCID,Burr Wesley S.9ORCID,Pagendam Daniel E.10,Chang Won11ORCID,Castruccio Stefano1ORCID

Affiliation:

1. Dept. of Applied and Computational Mathematics and Statistics University of Notre Dame Notre Dame Indiana USA

2. Dept. of Biostatistics Johns Hopkins University Baltimore Maryland USA

3. Dept. of Statistics University of Missouri Columbia Missouri USA

4. Dept. of Statistical Sciences and Operations Research Virginia Commonwealth University Richmond Virginia USA

5. Dept. of Mathematical Sciences, College of Science Princess Nourah Bint Abdulrahman University Riyadh Saudi Arabia

6. Wipro Limited Bengaluru India

7. School of Pure and Applied Physics Mahatma Gandhi University Kottayam India

8. Institute for Advanced Analytics North Carolina State University Raleigh North Carolina USA

9. Dept. of Mathematics Trent University Peterborough Ontario Canada

10. CSIRO Data61 Eveleigh Brisbane Australia

11. Div. of Statistics and Data Science University of Cincinnati Cincinnati Ohio USA

Abstract

AbstractThe ever increasing popularity of machine learning methods in virtually all areas of science, engineering and beyond is poised to put established statistical modeling approaches into question. Environmental statistics is no exception, as popular constructs such as neural networks and decision trees are now routinely used to provide forecasts of physical processes ranging from air pollution to meteorology. This presents both challenges and opportunities to the statistical community, which could contribute to the machine learning literature with a model‐based approach with formal uncertainty quantification. Should, however, classical statistical methodologies be discarded altogether in environmental statistics, and should our contribution be focused on formalizing machine learning constructs? This work aims at providing some answers to this thought‐provoking question with two time series case studies where selected models from both the statistical and machine learning literature are compared in terms of forecasting skills, uncertainty quantification and computational time. Relative merits of both class of approaches are discussed, and broad open questions are formulated as a baseline for a discussion on the topic.

Funder

National Institute of Environmental Health Sciences

National Science Foundation

Publisher

Wiley

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