This paper provides a statistical methodology for quantifying causality in complex dynamical systems, based on analysis of multidimensional time series data of the state variables. The methodology integrates Granger's causality analysis based on the log-likelihood function expansion (Partial pair-wise causality), and Akaike's power contribution approach over the whole frequency domain (Total causality). The proposed methodology addresses a major drawback of existing methodologies namely, their inability to use time series observation of state variables to quantify causality in complex systems. We first perform a simulation study to verify the efficacy of the methodology using data generated by several multivariate autoregressive processes, ...
Malaria, a disease with major health and socio-economic impacts, is driven by multiple factors, incl...
Understanding the relative influence of variables on ecosystem responses and the dynamics of their e...
In this work, recent and classical results on causality detection and predicability of a complex sys...
This paper provides a statistical methodology for quantifying causality in complex dynamical systems...
A widely agreed upon definition of time series causality inference, established in the sem-inal 1969...
Complex systems are challenging to understand, especially when they defy manipulative experiments fo...
The dynamics of marine populations are usually forced by biotic and abiotic factors occurring at dif...
Many research questions in Earth and environmental sciences are inherently causal, requiring robus...
Ecological multivariate systems offer a suitable data set on which to apply recent advances in infor...
The detection of causal interactions is of great importance when inferring complex ecosystem functio...
Identifying directed interactions between species from time series of their population densities has...
Attribution in ecosystems aims to identify the cause-effect relationships between the variables invo...
Complex system arises as a result of inter-dependencies between multiple components. The nonlinear i...
This paper is concerned with the problem of detecting causality in spatiotemporal data. In contrast ...
Coupled human and natural systems (CHANS) are complex, dynamic, interconnected systems with feedback...
Malaria, a disease with major health and socio-economic impacts, is driven by multiple factors, incl...
Understanding the relative influence of variables on ecosystem responses and the dynamics of their e...
In this work, recent and classical results on causality detection and predicability of a complex sys...
This paper provides a statistical methodology for quantifying causality in complex dynamical systems...
A widely agreed upon definition of time series causality inference, established in the sem-inal 1969...
Complex systems are challenging to understand, especially when they defy manipulative experiments fo...
The dynamics of marine populations are usually forced by biotic and abiotic factors occurring at dif...
Many research questions in Earth and environmental sciences are inherently causal, requiring robus...
Ecological multivariate systems offer a suitable data set on which to apply recent advances in infor...
The detection of causal interactions is of great importance when inferring complex ecosystem functio...
Identifying directed interactions between species from time series of their population densities has...
Attribution in ecosystems aims to identify the cause-effect relationships between the variables invo...
Complex system arises as a result of inter-dependencies between multiple components. The nonlinear i...
This paper is concerned with the problem of detecting causality in spatiotemporal data. In contrast ...
Coupled human and natural systems (CHANS) are complex, dynamic, interconnected systems with feedback...
Malaria, a disease with major health and socio-economic impacts, is driven by multiple factors, incl...
Understanding the relative influence of variables on ecosystem responses and the dynamics of their e...
In this work, recent and classical results on causality detection and predicability of a complex sys...