Conjugate gradient algorithm for efficient training of artificial neural networks 论文
1992IEE Proceedings G Circuits Devices and Systems引用 374
Neural Networks and ApplicationsTarget Tracking and Data Fusion in Sensor NetworksBlind Source Separation Techniques
摘要
A novel approach is presented for the training of multilayer feedforward neural networks, using a conjugate gradient algorithm incorporating an appropriate line search algorithm. The algorithm updates the input weights to each neuron in an efficient parallel way, similar to the one used by the well known backpropagation algorithm. The performance of the algorithm is superior to that of the conventional backpropagation algorithm and is based on strong theoretical reasons supported by the numerical results of three examples.