In this paper we test for Granger causality in high-dimensional vector autoregressive models (VARs) to disentangle and interpret the complex causal chains linking radiative forcings and global temperatures. By allowing for high dimensionality in the model we can enrich the information set with all relevant natural and anthropogenic forcing variables to obtain reliable causal relations. These variables have mostly been investigated in an aggregated form or in separate models in the previous literature. Additionally, our framework allows to ignore the order of integration of the variables and to directly estimate the VAR in levels, thus avoiding accumulating biases coming from unit-root and cointegration tests. This is of particular appeal fo...
AbstractThe aim of this paper is to investigate the relationships among Interhemispheric Temperature...
We evaluate causal dependencies between thirteen indices that represent large-scale climate patterns...
We propose a data-driven framework to simplify the description of spatiotemporal climate variability...
In this paper we test for Granger causality in high-dimensional vector autoregressive models (VARs) ...
We use the framework of Granger-causality testing in high-dimensional vector autoregressive models (...
Attribution studies in climate science aim for scientifically ascertaining the influence of climatic...
In our study, we present a purely statistical observations‐based model‐free analysis that provides e...
Several important questions cannot be answered with the standard toolkit of causal inference since a...
In this paper evidence of anthropogenic influence over the warming of the 20th century is presented ...
Climate change detection and attribution have been the subject of intense research and debate over a...
During the past five decades, global air temperatures have been warming at a rather high rate (IPCC-...
Here, we analyze recent measured data on global mean surface air temperature anomalies (GMTA) and va...
Attribution — the explanation of an observed change in terms of multiple causal factors — is the cor...
We consider the problem of estimating causal influences between observed processes from time series ...
This thesis has used bivariate time series models to investigate the long-run causal relationships b...
AbstractThe aim of this paper is to investigate the relationships among Interhemispheric Temperature...
We evaluate causal dependencies between thirteen indices that represent large-scale climate patterns...
We propose a data-driven framework to simplify the description of spatiotemporal climate variability...
In this paper we test for Granger causality in high-dimensional vector autoregressive models (VARs) ...
We use the framework of Granger-causality testing in high-dimensional vector autoregressive models (...
Attribution studies in climate science aim for scientifically ascertaining the influence of climatic...
In our study, we present a purely statistical observations‐based model‐free analysis that provides e...
Several important questions cannot be answered with the standard toolkit of causal inference since a...
In this paper evidence of anthropogenic influence over the warming of the 20th century is presented ...
Climate change detection and attribution have been the subject of intense research and debate over a...
During the past five decades, global air temperatures have been warming at a rather high rate (IPCC-...
Here, we analyze recent measured data on global mean surface air temperature anomalies (GMTA) and va...
Attribution — the explanation of an observed change in terms of multiple causal factors — is the cor...
We consider the problem of estimating causal influences between observed processes from time series ...
This thesis has used bivariate time series models to investigate the long-run causal relationships b...
AbstractThe aim of this paper is to investigate the relationships among Interhemispheric Temperature...
We evaluate causal dependencies between thirteen indices that represent large-scale climate patterns...
We propose a data-driven framework to simplify the description of spatiotemporal climate variability...