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Using a Mahalanobis-Like Distance to Train Radial Basis Neural Networks

机译:使用类似Mahalanobis的距离培训径向基本神经网络

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Radial Basis Neural Networks (RBNN) can approximate any regular function and have a faster training phase than other similar neural networks. However, the activation of each neuron depends on the euclidean distance between a pattern and the neuron center. Therefore, the activation function is symmetrical and all attributes are considered equally relevant. This could be solved by altering the metric used in the activation function (i.e. using non-symmetrical metrics). The Maha-lanobis distance is such a metric, that takes into account the variability of the attributes and their correlations. However, this distance is computed directly from the variance-covariance matrix and does not consider the accuracy of the learning algorithm. In this paper, we propose to use a generalized euclidean metric, following the Mahalanobis structure, but evolved by a Genetic Algorithm (GA). This GA searches for the distance matrix that minimizes the error produced by a fixed RBNN. Our approach has been tested on two domains and positive results have been observed in both cases.
机译:径向基础神经网络(RBNN)可以近似任何常规功能,并且具有比其他类似神经网络更快的训练阶段。然而,每个神经元的激活取决于图案和神经元中心之间的欧几里德距离。因此,激活函数是对称的,并且所有属性被认为是同样相关的。这可以通过改变激活函数中使用的度量来解决(即使用非对称度量)来解决。 Maha-Lanobis距离是这样的指标,考虑到属性的可变性及其相关性。然而,该距离直接从方差协方差矩阵计算,并且不考虑学习算法的准确性。在本文中,我们建议在Mahalanobis结构之后使用广义欧几里德公制,但是通过遗传算法(GA)演变。此GA搜索距离矩阵,最小化固定RBNN产生的错误。我们的方法已经在两种结构中进行了测试,两种情况下已经观察到阳性结果。

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