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Fast neural network algorithm for solving classification tasks: Batch error back-propagation algorithm

机译:解决分类任务的快速神经网络算法:批处理误差反向传播算法

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Classification is one-out-of several applications in the neural network (NN) world. Multilayer perceptron (MLP) is the common neural network architecture which is used for classification tasks. It is known for its error back propagation (EBP) algorithm, which opened the new way for solving classification problems given a set of empirical data. In this paper, we performed experiments using three different NN structures in order to find the best performing MLP neural network for the nonlinear classification of multiclass data sets. The three different MLP structures for solving classification problems having K classes are: one model/K output layer neurons, K separate models/One output layer neuron, and K joint models/One output layer neuron. A developed learning algorithm used here is the batch EBP algorithm which uses all the data as a single batch while updating the NN weights. The batch EBP speeds significantly the training up. The use of a pseudo-inverse in calculating the output layer weights is also contributing to faster training. The extensive series of experiments performed within the research proved that the best structure for solving multiclass classification problems is a K joint models/One output layer neuron structure.
机译:分类是神经网络(NN)领域中几种应用程序中的一种。多层感知器(MLP)是用于分类任务的常见神经网络体系结构。众所周知,它的错误反向传播(EBP)算法为给定一组经验数据的情况下解决分类问题的新方法开辟了道路。在本文中,我们使用三种不同的NN结构进行了实验,以便找到用于对多类数据集进行非线性分类的性能最佳的MLP神经网络。用于解决具有K类的分类问题的三种不同的MLP结构是:一个模型/ K个输出层神经元,K个单独的模型/一个输出层神经元和K个联合模型/一个输出层神经元。此处使用的已开发学习算法是批处理EBP算法,该算法将所有数据作为一个批处理使用,同时更新NN权重。批处理EBP大大加快了训练速度。在计算输出层权重时使用伪逆也有助于更快的训练。研究中进行的一系列实验证明,解决多类分类问题的最佳结构是K关节模型/一个输出层神经元结构。

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