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Midpoint-Validation Method of Neural Networks for Pattern Classification Problems

机译:模式分类问题神经网络中点验证方法

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In this paper, we propose a midpoint-validation method, which improves the generalization of neural networks. The problem associated with the former cross validation method is that efficiency is affected due to the separation of training data into two or more set. As for the proposed method, it creates midpoint data from the known training data and calculates a set of criteria using the newly created midpoint data and the previous training data. The implementation is easy since there is no unnecessary processing involved in separating the data into two or more sets. The advantage of the proposed method is that the method becomes much more efficient compared to the former method due to the numerical simulation used. We compare its performance with those of the Support Vector Machine (abbr. SVM), Multilayer Perceptron (abbr. MLP), Radial Basis Function (abbr. RBF) and the proposed method was tested on several benchmark problems. The results obtained from the simulation carried out shows the effectiveness of the proposed method.
机译:在本文中,我们提出了一种中点验证方法,这提高了神经网络的概括。与前交叉验证方法相关的问题是由于培训数据分离成两个或多个集合,因此效率受到影响。至于所提出的方法,它从已知的训练数据创建中点数据,并使用新创建的中点数据和先前的训练数据计算一组标准。实现很容易,因为在两个或多个集合中没有涉及不必要的处理涉及。所提出的方法的优点是,由于所使用的数值模拟,该方法与前一种方法相比变得更有效。我们将其性能与支持向量机(ABBR.SVM)的性能进行比较,Multilayer Perceptron(ABBR。MLP),径向基函数(ABBR。RBF)和所提出的方法在几个基准问题上进行了测试。从进行的模拟中获得的结果显示了所提出的方法的有效性。

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