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Hiemstra-Jones' test for ikke-lineær Granger-kausalitet×Convergent Cross Mapping (CCM)×Transfer Entropy×
FagområdeØkonometriKausal inferensKausal inferens
FamilieHypothesis testMachine learningMachine learning
Oprindelsesår199420122000
OphavspersonCraig Hiemstra & Jonathan JonesGeorge Sugihara et al.Thomas Schreiber
TypeNonparametric hypothesis testNonlinear time-series causality testNon-parametric information-theoretic measure
Oprindelig kildeHiemstra, C., & Jones, J. D. (1994). Testing for linear and nonlinear Granger causality in the stock price-volume relation. The Journal of Finance, 49(5), 1639–1664. DOI ↗Sugihara, G., et al. (2012). Detecting causality in complex ecosystems. Science, 338(6106), 496–500. DOI ↗Schreiber, T. (2000). Measuring information transfer. Physical Review Letters, 85(2), 461–464. DOI ↗
AliasserHJ Nonlinear Causality Test, Hiemstra-Jones Test, Nonlinear Granger Causality (Hiemstra-Jones), HJ Nedensellik TestiCCM, Cross-Convergent Mapping, Empirical Dynamic Modelling Causality, Yakınsak Çapraz HaritalamaSchreiber Information Transfer, Directed Information Flow, Conditional Mutual Information (directed), Transfer Entropisi
Relaterede333
ResuméThe Hiemstra-Jones test, introduced in 1994, is a nonparametric procedure for detecting nonlinear causal relationships between two time series after removing their linear interdependencies. Developed in the context of stock price and trading volume dynamics, it extends the standard linear Granger causality framework by using correlation integral statistics to detect predictability arising from nonlinear mechanisms that linear VAR models cannot capture.Convergent Cross Mapping (CCM) is a nonlinear, state-space method for detecting causality between time-series variables embedded in a shared dynamical system. Introduced by George Sugihara and colleagues in their landmark 2012 Science paper, CCM exploits Takens' embedding theorem: if variable X causally influences Y, the historical record of Y contains enough information to recover the states of X. Causality is confirmed when cross-map skill improves—converges—as the time-series library grows longer.Transfer Entropy (TE) is a non-parametric, information-theoretic measure of directed statistical dependence between two time series, introduced by Thomas Schreiber in 2000. Grounded in Shannon entropy, it quantifies how much information the past of one process Y reduces uncertainty about the next state of another process X, beyond what X's own past already provides. Unlike linear correlation or Granger causality, TE captures nonlinear interactions and requires no model assumptions about the underlying dynamics.
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ScholarGateSammenlign metoder: Hiemstra-Jones Causality · Convergent Cross Mapping · Transfer Entropy. Hentet 2026-06-19 fra https://scholargate.app/da/compare