Iterative pruning in second-order recurrent neural networks

An iterative pruning method for second-order recurrent neural networks is presented. Each step consists in eliminating a unit and adjusting the remaining weights so that the network performance does not worsen over the training set. The pruning process involves solving a linear system of equations in the least-squares sense. The algorithm also provides a criterion for choosing the units to be removed, which works well in practice. Initial experimental results demonstrate the effectiveness of the proposed approach over high-order architectures.