Emergent Mind

Learning Sparse Visual Representations with Leaky Capped Norm Regularizers

(1711.02857)
Published Nov 8, 2017 in cs.LG , cs.AI , cs.CV , math.NA , and stat.ML

Abstract

Sparsity inducing regularization is an important part for learning over-complete visual representations. Despite the popularity of $\ell1$ regularization, in this paper, we investigate the usage of non-convex regularizations in this problem. Our contribution consists of three parts. First, we propose the leaky capped norm regularization (LCNR), which allows model weights below a certain threshold to be regularized more strongly as opposed to those above, therefore imposes strong sparsity and only introduces controllable estimation bias. We propose a majorization-minimization algorithm to optimize the joint objective function. Second, our study over monocular 3D shape recovery and neural networks with LCNR outperforms $\ell1$ and other non-convex regularizations, achieving state-of-the-art performance and faster convergence. Third, we prove a theoretical global convergence speed on the 3D recovery problem. To the best of our knowledge, this is the first convergence analysis of the 3D recovery problem.

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