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Adaptive near minimum error rate training for neural networks with application to multiuser detection in CDMA communication systems

机译:神经网络的自适应近最小错误率训练及其在CDMA通信系统中的多用户检测中的应用

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摘要

Adaptive training of neural networks is typically done using some stochastic gradient algorithm that aims to minimize the mean square error (MSE). For many classification applications, such as channel equalization and code-division multiple-access (CDMA) multiuser detection, the goal is to minimize the error probability. For these applications, adopting the MSE criterion may lead to a poor performance. A nonlinear adaptive near minimum error rate algorithm called the nonlinear least bit error rate (NLBER) is developed for training neural networks for these kinds of applications. The proposed method is applied to downlink multiuser detection in CDMA communication systems. Simulation results show that the NLBER algorithm has a good convergence speed and a small-size radial basis function network trained by this adaptive algorithm can closely match the performance of the optimal Bayesian multiuser detector. The results also confirm that training the neural network multiuser detector using the least mean square algorithm, although generally converging well in the MSE, can produce a poor error rate performance.
机译:神经网络的自适应训练通常使用一些旨在最小化均方误差(MSE)的随机梯度算法完成。对于许多分类应用,例如信道均衡和码分多址(CDMA)多用户检测,目标是使错误概率最小化。对于这些应用,采用MSE标准可能会导致性能不佳。开发了一种称为非线性最小误码率(NLBER)的非线性自适应接近最小误码率算法,用于训练此类应用的神经网络。该方法应用于CDMA通信系统中的下行多用户检测。仿真结果表明,NLBER算法收敛速度快,该自适应算法训练的径向基函数网络小,可以与最优贝叶斯多用户检测器的性能紧密匹配。结果还证实,尽管通常在MSE中收敛良好,但使用最小均方算法训练神经网络多用户检测器可能会产生较差的错误率性能。

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