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Improving the MLP Learning by Using a Method to Calculate the Initial Weights of the Network Based on the Quality of Similarity Measure

机译:通过基于相似性度量质量的网络初始权重计算方法改进MLP学习

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This work presents a technique that integrates the backpropagation learning method with a method to calculate the initial weights in order to train the Multilayer Perceptron Model. The method to calculate the initial weights of the MLP is based on the quality of similarity measure proposed on the framework of the extended Rough Set Theory. Experimental results show that the proposed initialization method performs better than other methods used to calculate the weight of the features, so it is an interesting alternative to the conventional random initialization.
机译:这项工作提出了一种将反向传播学习方法与一种计算初始权重的方法相集成的技术,以训练多层感知器模型。 MLP初始权重的计算方法基于在扩展的粗糙集理论框架下提出的相似性度量的质量。实验结果表明,所提出的初始化方法的性能优于其他用于计算特征权重的方法,因此它是常规随机初始化的有趣替代方法。

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