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A radial basis function network classifier to maximise leave-one-out mutual information

机译:径向基函数网络分类器,最大限度地增加了留一法互信息

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We develop an orthogonal forward selection (OFS) approach to construct radial basis function (RBF) network classifiers for two-class problems. Our approach integrates several concepts in probabilistic modelling, including cross validation, mutual information and Bayesian hyperparameter fitting. At each stage of the OFS procedure, one model term is selected by maximising the leave-one-out mutual information (LOOMI) between the classifier's predicted class labels and the true class labels. We derive the formula of LOOMI within the OFS framework so that the LOOMI can be evaluated efficiently for model term selection. Furthermore, a Bayesian procedure of hyperparameter fitting is also integrated into the each stage of the OFS to infer the 12-norm based local regularisation parameter from the data. Since each forward stage is effectively fitting of a one-variable model, this task is very fast. The classifier construction procedure is automatically terminated without the need of using additional stopping criterion to yield very sparse RBF classifiers with excellent classification generalisation performance, which is particular useful for the noisy data sets with highly overlapping class distribution. A number of benchmark examples are employed to demonstrate the effectiveness of our proposed approach.
机译:我们开发了一种正交前向选择(OFS)方法来构造用于两类问题的径向基函数(RBF)网络分类器。我们的方法在概率建模中集成了几个概念,包括交叉验证,互信息和贝叶斯超参数拟合。在OFS程序的每个阶段,通过最大化分类器的预测类别标签和真实类别标签之间的“一劳永逸”互信息(LOOMI)来选择一个模型项。我们在OFS框架内得出LOOMI的公式,以便可以有效地评估LOOMI以进行模型项选择。此外,超参数拟合的贝叶斯过程也被集成到OFS的每个阶段中,以从数据中推断基于12范数的局部正则化参数。由于每个前进阶段都有效地拟合了一个变量模型,因此该任务非常快。分类器构造过程会自动终止,而无需使用其他停止条件来生成具有出色分类泛化性能的非常稀疏的RBF分类器,这对于具有高度重叠的类分布的嘈杂数据集特别有用。使用许多基准示例来证明我们提出的方法的有效性。

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