Statistical analysis of a two-layer backpropagation algorithm used for modeling nonlinear memoryless channels: the single neuron case

Neural networks have been used for modeling the nonlinear characteristics of memoryless nonlinear channels using backpropagation (BP) learning with experimental training data. In order to better understand this neural network application, this paper studies the transient and convergence properties of a simplified two-layer neural network that uses the BP algorithm and is trained with zero mean Gaussian data. The paper studies the effects of the neural net structure, weights, initial conditions, and algorithm step size on the mean square error (MSE) of the neural net approximation. The performance analysis is based on the derivation of recursions for the mean weight update that can be used to predict the weights and the MSE over time. Monte Carlo simulations display good to excellent agreement between the actual behavior and the predictions of the theoretical model.

[1]  C. Thomas,et al.  Digital Amplitude-Phase Keying with M-Ary Alphabets , 1974, IEEE Trans. Commun..

[2]  A. Kaye,et al.  Analysis and Compensation of Bandpass Nonlinearities for Communications , 1972, IEEE Trans. Commun..

[3]  P. Hetrakul,et al.  The Effects of Transponder Nonlinearity on Binary CPSK Signal Transmission , 1976, IEEE Trans. Commun..

[4]  A. Berman,et al.  Nonlinear Phase Shift in Traveling-Wave Tubes as Applied to Multiple Access Communications Satellites , 1970 .

[5]  B. Pontano,et al.  A General Theory of Intelligible Crosstalk between Frequency-Division Multiplexed Angle-Modulated Carriers , 1976, IEEE Trans. Commun..

[6]  J. J. Shynk,et al.  Steady-state analysis of a single-layer perceptron based on a system identification model with bias terms , 1991 .

[7]  John J. Shynk,et al.  Statistical analysis of the single-layer backpropagation algorithm. II. MSE and classification performance , 1993, IEEE Trans. Signal Process..

[8]  Adel A. M. Saleh,et al.  Frequency-Independent and Frequency-Dependent Nonlinear Models of TWT Amplifiers , 1981, IEEE Trans. Commun..

[9]  John J. Shynk,et al.  Statistical analysis of the single-layer backpropagation algorithm. I. mean weight behavior , 1993, IEEE Trans. Signal Process..

[10]  Kurt Hornik,et al.  Multilayer feedforward networks are universal approximators , 1989, Neural Networks.

[11]  Geoffrey E. Hinton,et al.  Learning internal representations by error propagation , 1986 .

[12]  R. Lippmann,et al.  An introduction to computing with neural nets , 1987, IEEE ASSP Magazine.

[13]  Jacques Sombrin,et al.  Neural networks for modeling nonlinear memoryless communication channels , 1997, IEEE Trans. Commun..

[14]  Robert Price,et al.  A useful theorem for nonlinear devices having Gaussian inputs , 1958, IRE Trans. Inf. Theory.

[15]  Sergio Benedetto,et al.  Digital Transmission Theory , 1987 .

[16]  Mohamed Ibnkahla Réseaux de neurones : nouvelles structures et applications aux communications numériques par satellite , 1996 .