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Efficient training of RBF networks for classification

机译:高效培训RBF网络进行分类

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Radial Basis Function networks with linear outputs are often used in regression problems because they can be substantially faster to train than Multi-layer Perceptrons. For classification problems, the use of linear outputs is less appropriate as the outputs are not guaranteed to represent probabilities. In this paper we show how RBFs with logistic and softmax outputs can be trained efficiently using algorithms derived from Generalised Linear Models. This approach is compared with standardnon-linear optimisation algorithms on a number of datasets.
机译:具有线性输出的径向基函数网络通常用于回归问题,因为它们可以比多层的感知训练大致快速。对于分类问题,使用线性输出不太合适,因为输出不保证表示概率。在本文中,我们展示了如何使用从广义线性模型衍生的算法有效地培训具有逻辑和软MAX输出的RBF。将这种方法与许多数据集上的标准线 - 线性优化算法进行比较。

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