| Literature DB >> 33462534 |
Vishnu Suresh Lokhande1, Songwong Tasneeyapant1, Abhay Venkatesh1, Sathya N Ravi2, Vikas Singh1.
Abstract
Rectified Linear Units (ReLUs) are among the most widely used activation function in a broad variety of tasks in vision. Recent theoretical results suggest that despite their excellent practical performance, in various cases, a substitution with basis expansions (e.g., polynomials) can yield significant benefits from both the optimization and generalization perspective. Unfortunately, the existing results remain limited to networks with a couple of layers, and the practical viability of these results is not yet known. Motivated by some of these results, we explore the use of Hermite polynomial expansions as a substitute for ReLUs in deep networks. While our experiments with supervised learning do not provide a clear verdict, we find that this strategy offers considerable benefits in semi-supervised learning (SSL) / transductive learning settings. We carefully develop this idea and show how the use of Hermite polynomials based activations can yield improvements in pseudo-label accuracies and sizable financial savings (due to concurrent runtime benefits). Further, we show via theoretical analysis, that the networks (with Hermite activations) offer robustness to noise and other attractive mathematical properties. Code is available on //GitHub.Entities:
Year: 2020 PMID: 33462534 PMCID: PMC7811889 DOI: 10.1109/cvpr42600.2020.01145
Source DB: PubMed Journal: Proc IEEE Comput Soc Conf Comput Vis Pattern Recognit ISSN: 1063-6919