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“SPOCU”: scaled polynomial constant unit activation function

Jozef Kiseľák, Ying Lü, Ján Švihra, P Szépe, Milan Stehlík

2020Neural Computing and Applications82 citationsDOIOpen Access PDF

Abstract

Abstract 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.

Topics & Concepts

Activation functionMNIST databaseNormalization (sociology)Computer sciencePolynomialArtificial neural networkNonlinear systemSet (abstract data type)Applied mathematicsFunction (biology)Mathematical optimizationAlgorithmMathematicsArtificial intelligenceMathematical analysisEvolutionary biologyBiologyAnthropologyProgramming languageSociologyPhysicsQuantum mechanicsNeural Networks and ApplicationsCell Image Analysis TechniquesNeural dynamics and brain function