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Comparison of six methods for the detection of causality in a bivariate time series
Anna Krakovská, Jozef Jakubík, Martina Chvosteková, David Coufal, Nikola Jajcay, Milan Paluš
Language English Country United States
Document type Research Support, Non-U.S. Gov't, Comparative Study
Grant support
NV15-33250A
MZ0
CEP Register
- MeSH
- Time Factors MeSH
- Causality MeSH
- Systems Analysis MeSH
- Models, Theoretical * MeSH
- Publication type
- Research Support, Non-U.S. Gov't MeSH
- Comparative Study MeSH
In this comparative study, six causality detection methods were compared, namely, the Granger vector autoregressive test, the extended Granger test, the kernel version of the Granger test, the conditional mutual information (transfer entropy), the evaluation of cross mappings between state spaces, and an assessment of predictability improvement due to the use of mixed predictions. Seven test data sets were analyzed: linear coupling of autoregressive models, a unidirectional connection of two Hénon systems, a unidirectional connection of chaotic systems of Rössler and Lorenz type and of two different Rössler systems, an example of bidirectionally connected two-species systems, a fishery model as an example of two correlated observables without a causal relationship, and an example of mediated causality. We tested not only 20000 points long clean time series but also noisy and short variants of the data. The standard and the extended Granger tests worked only for the autoregressive models. The remaining methods were more successful with the more complex test examples, although they differed considerably in their capability to reveal the presence and the direction of coupling and to distinguish causality from mere correlation.
References provided by Crossref.org
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