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Mutual Information-Based Modified Randomized Weights Neural Networks

机译:基于互信息的修正随机权重神经网络

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Randomized weights neural networks have fast learning speed and good generalization performance with one single hidden layer structure. Input weighs of the hidden layer are produced randomly. By employing certain activation function, outputs of the hidden layer are calculated with some randomization. Output weights are computed using pseudo inverse. Mutual information can be used to measure mutual dependence of two variables quantitatively based on the probability theory. In this paper, these hidden layer’s outputs that relate to prediction variable closely are selected with the simple mutual information based feature selection method. These hidden nodes with high mutual information values are maintained as a new hidden layer. Thus, the size of the hidden layer is reduced. The new hidden layer’s output weights are learned with the pseudo inverse method. The proposed method is compared with the original randomized algorithms using concrete compressive strength benchmark dataset.
机译:随机权重神经网络具有单个隐藏层结构,具有学习速度快,泛化性能好的特点。隐藏层的输入权重是随机产生的。通过采用某些激活函数,可以通过某种随机化来计算隐藏层的输出。使用伪逆计算输出权重。互信息可用于基于概率论定量地测量两个变量的相互依赖性。在本文中,使用简单的基于互信息的特征选择方法选择与预测变量密切相关的隐藏层输出。这些具有较高互信息值的隐藏节点将保留为新的隐藏层。因此,减小了隐藏层的尺寸。新的隐藏层的输出权重通过伪逆方法学习。将该方法与使用混凝土抗压强度基准数据集的原始随机算法进行了比较。

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