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Evolutionary training of hardware realizable multilayer perceptrons

机译:硬件可实现的多层感知器的进化训练

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摘要

The use of multilayer perceptrons (MLP) with threshold functions (binary step function activations) greatly reduces the complexity of the hardware implementation of neural networks, provides tolerance to noise and improves the interpretation of the internal representations. In certain case, such as in learning stationary tasks, it may be sufficient to find appropriate weights for an MLP with threshold activation functions by software simulation and, then, transfer the weight values to the hardware implementation. Efficient training of these networks is a subject of considerable ongoing research. Methods available in the literature mainly focus on two-state (threshold) nodes and try to train the networks by approximating the gradient of the error function and modifying appropriately the gradient descent, or by progressively altering the shape of the activation functions. In this paper, we propose an evolution-motivated approach, which is eminently suitable for networks with threshold functions and compare its performance with four other methods. The proposed evolutionary strategy does not need gradient related information, it is applicable to a situation where threshold activations are used from the-beginning, of-the training, as in "on-chip" training, and is able to train networks with integer weights.
机译:带有阈值函数(二进制步函数激活)的多层感知器(MLP)的使用大大降低了神经网络硬件实现的复杂性,提供了对噪声的容忍度,并改善了内部表示的解释。在某些情况下,例如在学习固定任务时,通过软件仿真为具有阈值激活功能的MLP找到合适的权重就足够了,然后将权重值传递给硬件实现。这些网络的有效培训是正在进行的大量研究的主题。文献中可用的方法主要集中在两个状态(阈值)节点上,并尝试通过近似误差函数的梯度并适当地修改梯度下降,或通过逐渐改变激活函数的形状来训练网络。在本文中,我们提出了一种基于进化的方法,该方法非常适合具有阈值功能的网络,并将其性能与其他四种方法进行比较。所提出的进化策略不需要梯度相关的信息,它适用于从训练的起点开始使用阈值激活的情况,例如“片上”训练,并且能够训练具有整数权重的网络。

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