Approximation of sigmoid function and the derivative for hardware implementation of artificial neurons
暂无分享,去创建一个
[1] D. J. Myers,et al. Efficient implementation of piecewise linear activation function for digital VLSI neural networks , 1989 .
[2] S. R. Jones,et al. IMPLEMENTING NONLINEAR ACTIVATION FUNCTIONS IN NEURAL NETWORK EMULATORS , 1991 .
[3] C. Alippi,et al. Simple approximation of sigmoidal functions: realistic design of digital neural networks capable of learning , 1991, 1991., IEEE International Sympoisum on Circuits and Systems.
[4] A. Tsoi,et al. Implementation issues of sigmoid function and its derivative for VLSI digital neural networks , 1992 .
[5] Stamatis Vassiliadis,et al. Sigmoid Generators for Neural Computing Using Piecewise Approximations , 1996, IEEE Trans. Computers.
[6] K. M. Curtis,et al. Piecewise linear approximation applied to nonlinear function of a neural network , 1997 .
[7] J. M. Tarela,et al. Optimised PWL recursive approximation and its application to neuro-fuzzy systems , 2002 .
[8] Leonardo Maria Reyneri. Implementation issues of neuro-fuzzy hardware: going toward HW/SW codesign , 2003, IEEE Trans. Neural Networks.