LGCVNov 8, 2018

Activation Functions: Comparison of trends in Practice and Research for Deep Learning

arXiv:1811.03378v11448 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental survey paper that helps practitioners make informed decisions about activation function selection by comparing practical usage trends with research findings.

This paper surveys existing activation functions used in deep learning applications and compares trends in practical deployments versus research results, compiling information to help practitioners choose appropriate activation functions for deployment-ready applications.

Deep neural networks have been successfully used in diverse emerging domains to solve real world complex problems with may more deep learning(DL) architectures, being developed to date. To achieve these state-of-the-art performances, the DL architectures use activation functions (AFs), to perform diverse computations between the hidden layers and the output layers of any given DL architecture. This paper presents a survey on the existing AFs used in deep learning applications and highlights the recent trends in the use of the activation functions for deep learning applications. The novelty of this paper is that it compiles majority of the AFs used in DL and outlines the current trends in the applications and usage of these functions in practical deep learning deployments against the state-of-the-art research results. This compilation will aid in making effective decisions in the choice of the most suitable and appropriate activation function for any given application, ready for deployment. This paper is timely because most research papers on AF highlights similar works and results while this paper will be the first, to compile the trends in AF applications in practice against the research results from literature, found in deep learning research to date.

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