Machine learning methods have recently created high expectations in the climate modelling context in view of addressing climate change, but they are often considered as non-physics-based ‘black boxes’ that may not provide any understanding. However, in many ways, understanding seems indispensable to appropriately evaluate climate models and to build confidence in climate projections. Relying on two case studies, we compare how machine learning and standard statistical techniques affect our ability to understand the climate system. For that purpose, we put five evaluative criteria of understanding to work: intelligibility, representational accuracy, empirical accuracy, coherence with background knowledge, and assessment of the domain of vali...
In the Information Age, datasets are getting too large and diverse for conventional synthesis method...
Climate change challenges societal functioning, likely requiring considerable adaptation to cope wit...
The use of machine learning in climate science is expanding rapidly after its success in other field...
Machine learning methods have recently created high expectations in the climate modelling context in...
In climate science, climate models are one of the main tools for understanding phenomena. Here, we d...
Parameterization and parameter tuning are central aspects of climate modeling, and there is widespre...
A general issue in climate science is the handling of big data and running complex and computational...
Machine learning is a growing field of research with many applications. It provides a series of tech...
Machine learning is a growing field of research with many applications. It provides a series of tech...
Machine learning is a growing field of research with many applications. It provides a series of tech...
A general issue in climate science is the handling of big data and running complex and computational...
A general issue in climate science is the handling of big data and running complex and computational...
Machine learning is a growing field of research with many applications. It provides a series of tech...
This project asks: what might we learn from today’s climate models? This is a tremendously important...
A general issue in climate science is the handling of big data and running complex and computationa...
In the Information Age, datasets are getting too large and diverse for conventional synthesis method...
Climate change challenges societal functioning, likely requiring considerable adaptation to cope wit...
The use of machine learning in climate science is expanding rapidly after its success in other field...
Machine learning methods have recently created high expectations in the climate modelling context in...
In climate science, climate models are one of the main tools for understanding phenomena. Here, we d...
Parameterization and parameter tuning are central aspects of climate modeling, and there is widespre...
A general issue in climate science is the handling of big data and running complex and computational...
Machine learning is a growing field of research with many applications. It provides a series of tech...
Machine learning is a growing field of research with many applications. It provides a series of tech...
Machine learning is a growing field of research with many applications. It provides a series of tech...
A general issue in climate science is the handling of big data and running complex and computational...
A general issue in climate science is the handling of big data and running complex and computational...
Machine learning is a growing field of research with many applications. It provides a series of tech...
This project asks: what might we learn from today’s climate models? This is a tremendously important...
A general issue in climate science is the handling of big data and running complex and computationa...
In the Information Age, datasets are getting too large and diverse for conventional synthesis method...
Climate change challenges societal functioning, likely requiring considerable adaptation to cope wit...
The use of machine learning in climate science is expanding rapidly after its success in other field...