Applying big data beyond small problems in climate research

Nature Climate Change 9 (March 2019):196-202 (2019)
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Abstract

Commercial success of big data has led to speculation that big-data-like reasoning could partly replace theory-based approaches in science. Big data typically has been applied to ‘small problems’, which are well-structured cases characterized by repeated evaluation of predictions. Here, we show that in climate research, intermediate categories exist between classical domain science and big data, and that big-data elements have also been applied without the possibility of repeated evaluation. Big-data elements can be useful for climate research beyond small problems if combined with more traditional approaches based on domain-specific knowledge. The biggest potential for big-data elements, we argue, lies in socioeconomic climate research.

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Climate Research and Big Data.Benedikt Knüsel, Christoph Baumberger & Reto Knutti - 2023 - In Gianfranco Pellegrino & Marcello Di Paola, Handbook of the Philosophy of Climate Change. Springer. pp. 125-149.

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Author Profiles

Benedikt Knüsel
Swiss Federal Institute of Technology, Zurich
Christoph Baumberger
Swiss Federal Institute of Technology, Zurich

Citations of this work

Understanding climate phenomena with data-driven models.Benedikt Knüsel & Christoph Baumberger - 2020 - Studies in History and Philosophy of Science Part A 84 (C):46-56.
Big data and prediction: Four case studies.Robert Northcott - 2020 - Studies in History and Philosophy of Science Part A 81:96-104.

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