首页> 外文期刊>American journal of applied sciences >HALF OF THRESHOLD ALGORITHM: AN ENHANCED LINEAR ADAPTIVE SKIPPING TRAINING ALGORITHM OR MULTILAYER FEEDFORWARD NEURAL NETWORKS
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HALF OF THRESHOLD ALGORITHM: AN ENHANCED LINEAR ADAPTIVE SKIPPING TRAINING ALGORITHM OR MULTILAYER FEEDFORWARD NEURAL NETWORKS

机译:半阈值算法:增强型线性自适应跳过训练算法或多层前馈神经网络

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摘要

Multilayer Feed Forward Neural Network (MFNN) has been successfully administered architectures for solving a wide range of supervised pattern recognition tasks. The most problematic task of MFNN is training phase which consumes very long training time on very huge training datasets. An enhanced linear adaptive skipping training algorithm for MFNN called Half of Threshold (HOT) is proposed in this research paper. The core idea of this study is to reduce the training time through random presentation of training input samples without affecting the network's accuracy. The random presentation is done by partitioning the training dataset into two distinct classes, classified and misclassified class, based on the comparison result of the calculated error measure with half of threshold value. Only the input samples in the misclassified class are presented to the next epoch for training, whereas the correctly classified class is skipped linearly which dynamically reducing the number of input samples exhibited at every single epoch without affecting the network's accuracy. Thus decreasing the size of the training dataset linearly can reduce the total training time, thereby speeding up the training process. This HOT algorithm can be implemented with any training algorithm used for supervised pattern classification and its implementation is very simple and easy. Simulation study results proved that HOT training algorithm achieves faster training than the other standard training algorithm.
机译:多层前馈神经网络(MFNN)已成功管理架构,用于解决各种监督模式识别任务。 MFNN最具问题的任务是训练阶段,这在非常庞大的训练数据集上消耗了很长的训练时间。本文提出了一种改进的针对MFNN的线性自适应跳过训练算法,称为半阈值(HOT)。这项研究的核心思想是通过随机表示训练输入样本来减少训练时间,而不影响网络的准确性。通过将计算出的误差测量值与阈值的一半进行比较,将训练数据集分为两个不同的类别(分类的和分类错误的类别)来完成随机表示。仅将分类错误的类别中的输入样本呈现给下一个纪元进行训练,而正确分类的类别将被线性跳过,这动态减少了每个单个纪元中出现的输入样本数,而不会影响网络的准确性。因此,线性减少训练数据集的大小可以减少总训练时间,从而加快训练过程。该HOT算法可以用任何用于监督模式分类的训练算法来实现,并且其实现非常简单容易。仿真研究结果表明,HOT训练算法比其他标准训练算法具有更快的训练速度。

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