Deep Networks with Internal Selective Attention through Feedback Connections

Neural Information Processing Systems 

Traditional convolutional neural networks (CNN) are stationary and feedforward. So does our Deep Attention Selective Network (dasNet) architecture. DasNet's feedback structure can dynamically alter its convolutional filter sensitivities during classification. It harnesses the power of sequential processing to improve classification performance, by allowing the network to iteratively focus its internal attention on some of its convolutional filters. Feedback is trained through direct policy search in a huge million-dimensional parameter space, through scalable natural evolution strategies (SNES).