Learning Algorithms for Quaternion-Valued Neural Networks
作者:Călin-Adrian Popa
摘要
This paper presents the deduction of the enhanced gradient descent, conjugate gradient, scaled conjugate gradient, quasi-Newton, and Levenberg–Marquardt methods for training quaternion-valued feedforward neural networks, using the framework of the HR calculus. The performances of these algorithms in the real- and complex-valued cases led to the idea of extending them to the quaternion domain, also. Experiments done using the proposed training methods on time series prediction applications showed a significant performance improvement over the quaternion gradient descent algorithm.
论文关键词:Quaternion-valued neural networks, Quickprop, Resilient backpropagation, Delta-bar-delta, SuperSAB, Conjugate gradient algorithms, Scaled conjugate gradient algorithm, Quasi-Newton algorithms, Levenberg–Marquardt algorithm, Time series prediction
论文评审过程:
论文官网地址:https://doi.org/10.1007/s11063-017-9716-1