Increased Complexity Training

The training strategy used in connectionist learning has not received much attention in the literature. We suggest a new strategy for backpropagation learning, increased complexity training, and show experimentally that it leads to faster convergence compared to both the conventional training strategy using a fixed set, and to combined subset training. Increased complexity training combined with an incremental increase in the success ratio required on the training set produced even quicker convergence.