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Binary Neural Network Classifier and it's bound for the number of hidden layer neurons

机译:二进制神经网络分类器,它与隐藏层神经元的数量有关

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In this paper, a Binary Neural Network Classifier (BNNC) is proposed in which hidden layer training is done in parallel. Learning Algorithm for the BNNC is described, which is based on the principle of Fast Covering Learning Algorithm (FCLA) proposed by Wang and Chaudhari [1]. The BNNC offers high degree of parallelism in hidden layer formation. Each module in the hidden layer of BNNC is exposed to the patterns of only one class. For achieving better accuracy, issue of overlapped classes are also handled. The method is tested on few benchmark datasets, accuracies are within the acceptable range. Due to parallelism at hidden layer level, training time is decreased, therefore, it can be used for voluminous realistic database. An analytical formulation is developed to evaluate the number of hidden layer neurons, it is in the 0(log(N)), where N represents the number of inputs.
机译:本文提出了一种二进制神经网络分类器(BNNC),其中并行进行隐藏层训练。描述了BNNC的学习算法,该算法基于Wang和Chaudhari [1]提出的快速覆盖学习算法(FCLA)的原理。 BNNC在隐藏层形成中提供了高度的并行性。 BNNC的隐藏层中的每个模块都仅暴露于一个类的模式。为了获得更好的准确性,还处理了重叠类的问题。该方法在少数基准数据集上进行了测试,准确性在可接受的范围内。由于隐藏层级别的并行性,减少了训练时间,因此可以用于大量的现实数据库。开发了一种分析公式来评估隐藏层神经元的数量,其形式为0(log(N)),其中N表示输入的数量。

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