Fourier neural networks: A comparative study
Malika Uteuliyeva, Abylay Zhumekenov, Rustem Takhanov, Zhenisbek Assylbekov, Alejandro J. Castro, Olzhas Kabdolov
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 approximation of a known function of multiple variables.
Topics & Concepts
Sigmoid functionFourier seriesArtificial neural networkFourier transformComputer scienceFourier analysisFunction (biology)Series (stratigraphy)Discrete Fourier seriesApplied mathematicsAlgorithmArtificial intelligenceMathematicsShort-time Fourier transformMathematical analysisEvolutionary biologyPaleontologyBiologyNeural Networks and ApplicationsModel Reduction and Neural NetworksControl Systems and Identification