PARAMETRIC FLATTEN-T SWISH: AN ADAPTIVE NONLINEAR ACTIVATION FUNCTION FOR DEEP LEARNING

An Adaptive Non-linear Activation Function for Deep Learning

Pengarang

  • Hock Hung Chieng
  • Noorhaniza Wahid
  • Pauline Ong

DOI:

https://doi.org/10.32890/jict.20.1.2021.9267

Abstrak

Activation function is a key component in deep learning that performs non-linear mappings between the inputs and outputs. Rectified Linear Unit (ReLU) has been the most popular activation function across the deep learning community. However, ReLU contains several shortcomings that can result in inefficient training of the deep neural networks, these are: 1) the negative cancellation property of ReLU tends to treat negative inputs as unimportant information for the learning, resulting in performance degradation; 2) the inherent predefined nature of ReLU is unlikely to promote additional flexibility, expressivity, and robustness to the networks; 3) the mean activation of ReLU is highly positive and leads to bias shift effect in network layers; and 4) the multilinear structure of ReLU restricts the non-linear approximation power of the networks. To tackle these shortcomings, this paper introduced Parametric Flatten-T Swish (PFTS) as an alternative to ReLU. By taking ReLU as a baseline method, the experiments showed that PFTS improved classification accuracy on SVHN dataset by 0.31%, 0.98%, 2.16%, 17.72%, 1.35%, 0.97%, 39.99%, and 71.83% on DNN-3A, DNN-3B, DNN-4, DNN-5A, DNN-5B, DNN-5C, DNN-6, and DNN-7, respectively. Besides, PFTS also achieved the highest mean rank among the comparison methods. The proposed PFTS manifested higher non-linear approximation power during training and thereby improved the predictive performance of the networks.

Biografi Pengarang

  • Noorhaniza Wahid

    NOORHANIZA BINTI WAHID received her Ph.D. degree in Information Technology from the University of Sydney. She is currently an assosiate professor at Faculty of Computer Science and Information Technology, Universiti Tun Hussein Onn Malaysia. Her research interests include multimedia, metaheuristic optimization algorithm and machine leraning.

  • Pauline Ong

    Ong Pauline recieved the Ph.D degree in Applied Mathematics from Universiti Sains Malaysia. She is currently a associate professor at Faculty of Mechanical Engineering and Manufacturing, Universiti Tun Hussein Onn Malaysia. Her research interest include Artificial Intelligence, Artificial Neural Networks, Evolutionary Computing and Mathematical Modeling.

     

Fail Tambahan

Diterbitkan

20202020-November11-0404

Cara Memetik

PARAMETRIC FLATTEN-T SWISH: AN ADAPTIVE NONLINEAR ACTIVATION FUNCTION FOR DEEP LEARNING: An Adaptive Non-linear Activation Function for Deep Learning. (2020). Journal of Information and Communication Technology, 20(1), 21-39. https://doi.org/10.32890/jict.20.1.2021.9267

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