Identifying causal relationships and quantifying their strength from observational time series data are key problems in disciplines dealing with complex dynamical systems such as the Earth system or the human body. Data-driven causal inference in such systems 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 to estimate causal networks from large-scale time series datasets. We validate the method on time series of well-understood physical mechanisms in the climate system and the human heart and using large-scale synthetic datasets mimicking the typical p...
Complex systems are challenging to understand, especially when they defy manipulative experiments fo...
Many research questions in Earth and environmental sciences are inherently causal, requiring robus...
We evaluate causal dependencies between thirteen indices that represent large-scale climate patterns...
Identifying causal relationships and quantifying their strength from observational time series data ...
Identifying causal relationships from observational time series data is a key problem in disciplines...
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 ...
In this talk I will, first, introduce the so-called causal discovery task, that is, the task of lear...
The quest to understand cause and effect relationships is at the basis of the scientific enterprise....
Consider two stationary time series with heavy-tailed marginal distributions. We aim to detect wheth...
Local meteorological conditions and biospheric activity are tightly coupled. Understanding these lin...
Inferring causal relations from observational time series data is a key problem across science and e...
This paper suggests new methods for the development of network models in climate research. Current...
The Earth's climate is a highly complex and dynamical system. To better understand and robustly pred...
International audienceWe introduce in this survey the major concepts, models, and algorithms propose...
Complex systems are challenging to understand, especially when they defy manipulative experiments fo...
Many research questions in Earth and environmental sciences are inherently causal, requiring robus...
We evaluate causal dependencies between thirteen indices that represent large-scale climate patterns...
Identifying causal relationships and quantifying their strength from observational time series data ...
Identifying causal relationships from observational time series data is a key problem in disciplines...
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 ...
In this talk I will, first, introduce the so-called causal discovery task, that is, the task of lear...
The quest to understand cause and effect relationships is at the basis of the scientific enterprise....
Consider two stationary time series with heavy-tailed marginal distributions. We aim to detect wheth...
Local meteorological conditions and biospheric activity are tightly coupled. Understanding these lin...
Inferring causal relations from observational time series data is a key problem across science and e...
This paper suggests new methods for the development of network models in climate research. Current...
The Earth's climate is a highly complex and dynamical system. To better understand and robustly pred...
International audienceWe introduce in this survey the major concepts, models, and algorithms propose...
Complex systems are challenging to understand, especially when they defy manipulative experiments fo...
Many research questions in Earth and environmental sciences are inherently causal, requiring robus...
We evaluate causal dependencies between thirteen indices that represent large-scale climate patterns...