Compression complexity with ordinal patterns for robust causal inference in irregularly sampled time series
Distinguishing cause from effect is a scientific challenge resisting solutions from mathematics, statistics, information theory and computer science. Compression-Complexity Causality (CCC) is a recently proposed interventional measure of causality, inspired by Wiener–Granger’s idea. It estimates cau...
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Veröffentlicht in: | Scientific reports 2022-08, Vol.12 (1), p.14170-14170, Article 14170 |
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Sprache: | eng |
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Zusammenfassung: | Distinguishing cause from effect is a scientific challenge resisting solutions from mathematics, statistics, information theory and computer science.
Compression-Complexity Causality (CCC)
is a recently proposed
interventional
measure of causality, inspired by Wiener–Granger’s idea. It estimates causality based on change in dynamical compression-complexity (or compressibility) of the effect variable, given the cause variable. CCC works with minimal assumptions on given data and is robust to irregular-sampling, missing-data and finite-length effects. However, it only works for one-dimensional time series. We propose an ordinal pattern symbolization scheme to encode multidimensional patterns into one-dimensional symbolic sequences, and thus introduce the
Permutation CCC (PCCC)
. We demonstrate that PCCC retains all advantages of the original CCC and can be applied to data from multidimensional systems with potentially unobserved variables which can be reconstructed using the embedding theorem. PCCC is tested on numerical simulations and applied to paleoclimate data characterized by irregular and uncertain sampling and limited numbers of samples. |
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ISSN: | 2045-2322 2045-2322 |
DOI: | 10.1038/s41598-022-18288-4 |