SOTAVerified

Building effective deep neural networks one feature at a time

2018-01-01ICLR 2018Unverified0· sign in to hype

Martin Mundt, Tobias Weis, Kishore Konda, Visvanathan Ramesh

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Successful training of convolutional neural networks is often associated with suffi- ciently deep architectures composed of high amounts of features. These networks typically rely on a variety of regularization and pruning techniques to converge to less redundant states. We introduce a novel bottom-up approach to expand representations in fixed-depth architectures. These architectures start from just a single feature per layer and greedily increase width of individual layers to attain effective representational capacities needed for a specific task. While network growth can rely on a family of metrics, we propose a computationally efficient version based on feature time evolution and demonstrate its potency in determin- ing feature importance and a networks’ effective capacity. We demonstrate how automatically expanded architectures converge to similar topologies that benefit from lesser amount of parameters or improved accuracy and exhibit systematic correspondence in representational complexity with the specified task. In contrast to conventional design patterns with a typical monotonic increase in the amount of features with increased depth, we observe that CNNs perform better when there is more learnable parameters in intermediate, with falloffs to earlier and later layers.

Tasks

Reproductions