An error-entropy minimization algorithm for supervised training of nonlinear adaptive systems 论文

2002IEEE Transactions on Signal Processing引用 355
Neural Networks and ApplicationsControl Systems and IdentificationChaos control and synchronization

摘要

The paper investigates error-entropy-minimization in adaptive systems training. We prove the equivalence between minimization of error's Renyi (1970) entropy of order /spl alpha/ and minimization of a Csiszar (1981) distance measure between the densities of desired and system outputs. A nonparametric estimator for Renyi's entropy is presented, and it is shown that the global minimum of this estimator is the same as the actual entropy. The performance of the error-entropy-minimization criterion is compared with mean-square-error-minimization in the short-term prediction of a chaotic time series and in nonlinear system identification.