4.6 Article

SPOCU: scaled polynomial constant unit activation function

期刊

NEURAL COMPUTING & APPLICATIONS
卷 33, 期 8, 页码 3385-3401

出版社

SPRINGER LONDON LTD
DOI: 10.1007/s00521-020-05182-1

关键词

Activation function; SPOCU; SELU; ReLU; Cancer discrimination; Percolation

资金

  1. Johannes Kepler University Linz
  2. FONDECYT [N1151441]
  3. Slovak Research and Development Agency [APVV-16-0337, APVV-17-0568]
  4. project Modeling complex dependencies: how to make strategic multicriterial decisions?/mODEC [LIT-2016-1-SEE-023]

向作者/读者索取更多资源

The study examines the numerical and computational complexity and quality of approximation for neural networks with different activation functions, introducing a new activation function SPOCU which demonstrates superiority in various problems. The theoretical and practical motivations behind SPOCU's good properties are explained, including its application in cancer discrimination. Comparison with SELU and ReLU on a large dataset proves the excellent performance of SPOCU.
We address the following problem: given a set of complex images or a large database, the numerical and computational complexity and quality of approximation for neural network may drastically differ from one activation function to another. A general novel methodology, scaled polynomial constant unit activation function SPOCU, is introduced and shown to work satisfactorily on a variety of problems. Moreover, we show that SPOCU can overcome already introduced activation functions with good properties, e.g., SELU and ReLU, on generic problems. In order to explain the good properties of SPOCU, we provide several theoretical and practical motivations, including tissue growth model and memristive cellular nonlinear networks. We also provide estimation strategy for SPOCU parameters and its relation to generation of random type of Sierpinski carpet, related to the [pppq] model. One of the attractive properties of SPOCU is its genuine normalization of the output of layers. We illustrate SPOCU methodology on cancer discrimination, including mammary and prostate cancer and data from Wisconsin Diagnostic Breast Cancer dataset. Moreover, we compared SPOCU with SELU and ReLU on large dataset MNIST, which justifies usefulness of SPOCU by its very good performance.

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