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Transfer entropy

Transfer entropy is a non-parametric statistic measuring the amount of directed (time-asymmetric) transfer of information between two random processes. Transfer entropy from a process X to another process Y is the amount of uncertainty reduced in future values of Y by knowing the past values of X given past values of Y. More specifically, if X t {displaystyle X_{t}} and Y t {displaystyle Y_{t}} for t ∈ N {displaystyle tin mathbb {N} } denote two random processes and the amount of information is measured using Shannon's entropy, the transfer entropy can be written as: Transfer entropy is a non-parametric statistic measuring the amount of directed (time-asymmetric) transfer of information between two random processes. Transfer entropy from a process X to another process Y is the amount of uncertainty reduced in future values of Y by knowing the past values of X given past values of Y. More specifically, if X t {displaystyle X_{t}} and Y t {displaystyle Y_{t}} for t ∈ N {displaystyle tin mathbb {N} } denote two random processes and the amount of information is measured using Shannon's entropy, the transfer entropy can be written as: where H(X) is Shannon entropy of X. The above definition of transfer entropy has been extended by other types of entropy measures such as Rényi entropy. Transfer entropy is conditional mutual information, with the history of the influenced variable Y t − 1 : t − L {displaystyle Y_{t-1:t-L}} in the condition: Transfer entropy reduces to Granger causality for vector auto-regressive processes. Hence, it is advantageous when the model assumption of Granger causality doesn't hold, for example, analysis of non-linear signals. However, it usually requires more samples for accurate estimation.The probabilities in the entropy formula can be estimated using different approaches (binning, nearest neighbors) or, in order to reduce complexity, using a non-uniform embedding.While it was originally defined for bivariate analysis, transfer entropy has been extended to multivariate forms, either conditioning on other potential source variables or considering transfer from a collection of sources, although these forms require more samples again. Transfer entropy has been used for estimation of functional connectivity of neurons and social influence in social networks.

[ "Principle of maximum entropy", "Joint quantum entropy", "Entropy (information theory)", "Typical set", "Information diagram", "Shannon's source coding theorem", "Differential entropy", "Uncertainty coefficient" ]
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