Discovering Causal Relations and Equations from Data

05/21/2023
by   Gustau Camps-Valls, et al.
0

Physics is a field of science that has traditionally used the scientific method to answer questions about why natural phenomena occur and to make testable models that explain the phenomena. Discovering equations, laws and principles that are invariant, robust and causal explanations of the world has been fundamental in physical sciences throughout the centuries. Discoveries emerge from observing the world and, when possible, performing interventional studies in the system under study. With the advent of big data and the use of data-driven methods, causal and equation discovery fields have grown and made progress in computer science, physics, statistics, philosophy, and many applied fields. All these domains are intertwined and can be used to discover causal relations, physical laws, and equations from observational data. This paper reviews the concepts, methods, and relevant works on causal and equation discovery in the broad field of Physics and outlines the most important challenges and promising future lines of research. We also provide a taxonomy for observational causal and equation discovery, point out connections, and showcase a complete set of case studies in Earth and climate sciences, fluid dynamics and mechanics, and the neurosciences. This review demonstrates that discovering fundamental laws and causal relations by observing natural phenomena is being revolutionised with the efficient exploitation of observational data, modern machine learning algorithms and the interaction with domain knowledge. Exciting times are ahead with many challenges and opportunities to improve our understanding of complex systems.

READ FULL TEXT

page 1

page 12

page 13

page 14

page 32

page 34

page 36

page 37

research
10/18/2020

Living in the Physics and Machine Learning Interplay for Earth Observation

Most problems in Earth sciences aim to do inferences about the system, w...
research
11/27/2019

Visual Physics: Discovering Physical Laws from Videos

In this paper, we teach a machine to discover the laws of physics from v...
research
07/01/2021

Interactive Causal Structure Discovery in Earth System Sciences

Causal structure discovery (CSD) models are making inroads into several ...
research
02/12/2006

Emergence Explained

Emergence (macro-level effects from micro-level causes) is at the heart ...
research
05/04/2020

Off-the-shelf deep learning is not enough: parsimony, Bayes and causality

Deep neural networks ("deep learning") have emerged as a technology of c...

Please sign up or login with your details

Forgot password? Click here to reset