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Fourier Neural Networks: A Comparative Study (1902.03011v1)
Published 8 Feb 2019 in cs.NE
Abstract: We review neural network architectures which were motivated by Fourier series and integrals and which are referred to as Fourier neural networks. These networks are empirically evaluated in synthetic and real-world tasks. Neither of them outperforms the standard neural network with sigmoid activation function in the real-world tasks. All neural networks, both Fourier and the standard one, empirically demonstrate lower approximation error than the truncated Fourier series when it comes to an approximation of a known function of multiple variables.
- Abylay Zhumekenov (3 papers)
- Malika Uteuliyeva (1 paper)
- Olzhas Kabdolov (1 paper)
- Rustem Takhanov (27 papers)
- Zhenisbek Assylbekov (16 papers)
- Alejandro J. Castro (33 papers)