Alopex algorithm for training multilayer neural networks

K. P. Venugopal, A. S. Pandya
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引用次数: 16

Abstract

The use of the Alopex algorithm for training multilayer neural networks is described. Alopex is a biologically influenced stochastic parallel process designed to find the global minimum of error surfaces. It has a number of advantages compared to other algorithms, such as backpropagation, reinforcement learning, and the Boltzmann machine. The authors investigate the efficacy of the algorithm for faster convergence by considering different error functions. They discuss the specifics of the algorithm for applications involving learning tasks. Results of computer simulations with standard problems such as XOR, parity, symmetry, and encoders of different dimensions are also presented and compared with those obtained using backpropagation. A temperature perturbation scheme is proposed which allows the algorithm to get out of strong local minima.<>
用于训练多层神经网络的Alopex算法
描述了Alopex算法在多层神经网络训练中的应用。Alopex是一种受生物影响的随机并行过程,旨在寻找误差曲面的全局最小值。与其他算法(如反向传播、强化学习和玻尔兹曼机)相比,它有许多优点。通过考虑不同的误差函数,研究了该算法的收敛速度。他们讨论了涉及学习任务的应用程序的算法细节。给出了异或、奇偶、对称和不同维度编码器等标准问题的计算机模拟结果,并与反向传播的结果进行了比较。提出了一种温度扰动方案,使算法能够摆脱强局部极小值
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