Identifying causal relationships from observational time series data is a key problem in disciplines such as climate science or neuroscience, where experiments are often not possible. Data-driven causal inference is challenging since datasets are often high-dimensional and nonlinear with limited sample sizes. Here we introduce a novel method that flexibly combines linear or nonlinear conditional independence tests with a causal discovery algorithm that allows to reconstruct causal networks from large-scale time series datasets. We validate the method on a well-established climatic teleconnection connecting the tropical Pacific with extra-tropical temperatures and using large-scale synthetic datasets mimicking the typical properties of real ...
Causal discovery from time series data is a typical problem setting across the sciences. Often, mult...
We evaluate causal dependencies between thirteen indices that represent large-scale climate patterns...
The Earth's climate is a highly complex and dynamical system. To better understand and robustly pred...
Identifying causal relationships and quantifying their strength from observational time series data ...
The attribution of factors influencing positive and negative phase durations of climate teleconnecti...
This paper suggests new methods for the development of network models in climate research. Current...
The drive to understand the laws that govern the universe and ourselves in order to expand our view ...
We propose a spatiotemporal model system to evaluate methods of causal discovery. The use of causal ...
Identifying causal relationships based on observational data is challenging, because in the absence ...
Identifying causality in multivariate time-series data is a topic or significant interest due to its...
International audienceCausality defines the relationship between cause and effect. In multivariate t...
We show that the climate phenomena of El Niño and La Niña arise naturally as states of macro-variabl...
International audienceWe introduce in this survey the major concepts, models, and algorithms propose...
We describe a unification of old and recent ideas for formulating graphical models to explain time s...
Consider two stationary time series with heavy-tailed marginal distributions. We aim to detect wheth...
Causal discovery from time series data is a typical problem setting across the sciences. Often, mult...
We evaluate causal dependencies between thirteen indices that represent large-scale climate patterns...
The Earth's climate is a highly complex and dynamical system. To better understand and robustly pred...
Identifying causal relationships and quantifying their strength from observational time series data ...
The attribution of factors influencing positive and negative phase durations of climate teleconnecti...
This paper suggests new methods for the development of network models in climate research. Current...
The drive to understand the laws that govern the universe and ourselves in order to expand our view ...
We propose a spatiotemporal model system to evaluate methods of causal discovery. The use of causal ...
Identifying causal relationships based on observational data is challenging, because in the absence ...
Identifying causality in multivariate time-series data is a topic or significant interest due to its...
International audienceCausality defines the relationship between cause and effect. In multivariate t...
We show that the climate phenomena of El Niño and La Niña arise naturally as states of macro-variabl...
International audienceWe introduce in this survey the major concepts, models, and algorithms propose...
We describe a unification of old and recent ideas for formulating graphical models to explain time s...
Consider two stationary time series with heavy-tailed marginal distributions. We aim to detect wheth...
Causal discovery from time series data is a typical problem setting across the sciences. Often, mult...
We evaluate causal dependencies between thirteen indices that represent large-scale climate patterns...
The Earth's climate is a highly complex and dynamical system. To better understand and robustly pred...