Causal Inference in Geoscience and Remote Sensing from Observational
Data
- URL: http://arxiv.org/abs/2012.05150v1
- Date: Mon, 7 Dec 2020 22:56:55 GMT
- Title: Causal Inference in Geoscience and Remote Sensing from Observational
Data
- Authors: Adri\'an P\'erez-Suay, Gustau Camps-Valls
- Abstract summary: We try to estimate the correct direction of causation using a finite set of empirical data.
We illustrate performance in a collection of 28 geoscience causal inference problems.
The criterion achieves state-of-the-art detection rates in all cases, it is generally robust to noise sources and distortions.
- Score: 9.800027003240674
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Establishing causal relations between random variables from observational
data is perhaps the most important challenge in today's \blue{science}. In
remote sensing and geosciences this is of special relevance to better
understand the Earth's system and the complex interactions between the
governing processes. In this paper, we focus on observational causal inference,
thus we try to estimate the correct direction of causation using a finite set
of empirical data. In addition, we focus on the more complex bivariate scenario
that requires strong assumptions and no conditional independence tests can be
used. In particular, we explore the framework of (non-deterministic) additive
noise models, which relies on the principle of independence between the cause
and the generating mechanism. A practical algorithmic instantiation of such
principle only requires 1) two regression models in the forward and backward
directions, and 2) the estimation of {\em statistical independence} between the
obtained residuals and the observations. The direction leading to more
independent residuals is decided to be the cause. We instead propose a
criterion that uses the {\em sensitivity} (derivative) of the dependence
estimator, the sensitivity criterion allows to identify samples most affecting
the dependence measure, and hence the criterion is robust to spurious
detections. We illustrate performance in a collection of 28 geoscience causal
inference problems, in a database of radiative transfer models simulations and
machine learning emulators in vegetation parameter modeling involving 182
problems, and in assessing the impact of different regression models in a
carbon cycle problem. The criterion achieves state-of-the-art detection rates
in all cases, it is generally robust to noise sources and distortions.
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