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Cascade Error Projection: A Learning Algorithm for Hardware Implementation

机译:级联误差投影:一种用于硬件实现的学习算法

摘要

In this paper, we workout a detailed mathematical analysis for a new learning algorithm termed Cascade Error Projection (CEP) and a general learning frame work. This frame work can be used to obtain the cascade correlation learning algorithm by choosing a particular set of parameters. Furthermore, CEP learning algorithm is operated only on one layer, whereas the other set of weights can be calculated deterministically. In association with the dynamical stepsize change concept to convert the weight update from infinite space into a finite space, the relation between the current stepsize and the previous energy level is also given and the estimation procedure for optimal stepsize is used for validation of our proposed technique. The weight values of zero are used for starting the learning for every layer, and a single hidden unit is applied instead of using a pool of candidate hidden units similar to cascade correlation scheme. Therefore, simplicity in hardware implementation is also obtained. Furthermore, this analysis allows us to select from other methods (such as the conjugate gradient descent or the Newton's second order) one of which will be a good candidate for the learning technique. The choice of learning technique depends on the constraints of the problem (e.g., speed, performance, and hardware implementation); one technique may be more suitable than others. Moreover, for a discrete weight space, the theoretical analysis presents the capability of learning with limited weight quantization. Finally, 5- to 8-bit parity and chaotic time series prediction problems are investigated; the simulation results demonstrate that 4-bit or more weight quantization is sufficient for learning neural network using CEP. In addition, it is demonstrated that this technique is able to compensate for less bit weight resolution by incorporating additional hidden units. However, generation result may suffer somewhat with lower bit weight quantization.
机译:在本文中,我们对称为级联误差投影(CEP)的新学习算法和常规学习框架进行了详细的数学分析。通过选择一组特定的参数,该框架可用于获得级联相关学习算法。此外,CEP学习算法仅在一层上运行,而另一组权重可以确定性地计算。结合动态步长变化概念将权重更新从无限空间转换为有限空间,还给出了当前步长与先前能量水平之间的关系,并使用最佳步长的估算程序来验证我们提出的技术。零值的权重值用于开始每一层的学习,并且应用单个隐藏单位,而不是使用类似于级联相关方案的候选隐藏单位池。因此,也获得了硬件实现的简单性。此外,这种分析使我们可以从其他方法(例如共轭梯度下降法或牛顿二阶法)中进行选择,其中一种方法将是学习技术的理想选择。学习技术的选择取决于问题的约束条件(例如速度,性能和硬件实现);一种技术可能比其他技术更适合。此外,对于离散的权重空间,理论分析提供了具有有限权重量化的学习能力。最后,研究了5至8位奇偶校验和混沌时间序列预测问题;仿真结果表明,4位或更多权重量化足以使用CEP学习神经网络。此外,证明了该技术能够通过合并其他隐藏单元来补偿较小的位权重分辨率。但是,生成结果可能会因较低的比特权重量化而受到一定影响。

著录项

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    Daud Taher; Duong Tuan A.;

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  • 年度 1996
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