Authors
Yili Xia, Cyrus Jahanchahi, Danilo P Mandic
Publication date
2014/5/21
Journal
IEEE transactions on neural networks and learning systems
Volume
26
Issue
4
Pages
663-673
Publisher
IEEE
Description
Quaternion-valued echo state networks (QESNs) are introduced to cater for 3-D and 4-D processes, such as those observed in the context of renewable energy (3-D wind modeling) and human centered computing (3-D inertial body sensors). The introduction of QESNs is made possible by the recent emergence of quaternion nonlinear activation functions with local analytic properties, required by nonlinear gradient descent training algorithms. To make QENSs second-order optimal for the generality of quaternion signals (both circular and noncircular), we employ augmented quaternion statistics to introduce widely linear QESNs. To that end, the standard widely linear model is modified so as to suit the properties of dynamical reservoir, typically realized by recurrent neural networks. This allows for a full exploitation of second-order information in the data, contained both in the covariance and pseudocovariances, and …
Total citations
20152016201720182019202020212022202320244315111911914126
Scholar articles
Y Xia, C Jahanchahi, DP Mandic - IEEE transactions on neural networks and learning …, 2014