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Localized generalization error and its application to RBFNN training

机译:局部化泛化误差及其在RBFNN训练中的应用

摘要

The generalization error bounds for the entire input space found by current error models using the number of effective parameters of a classifier and the number of training samples are usually very loose. But classifiers such as SVM, RBFNN and MLPNN, are really local learning machines used for many application problems, which consider unseen samples close to the training samples more important. In this paper, we propose a localized generalization error model which bounds above the generalization error within a neighborhood of the training samples using stochastic sensitivity measure (expectation of the squared output perturbations). It is then used to develop a model selection technique for a classifier with maximal coverage of unseen samples by specifying a generalization error threshold. Experiments by using eight real world datasets show that, in comparison with cross-validation, sequential learning, and two other ad-hoc methods, our technique consistently yields the best testing classification accuracy with fewer hidden neurons and less training time.
机译:当前错误模型使用分类器的有效参数数量和训练样本数量找到的整个输入空间的泛化误差范围通常非常松散。但是,诸如SVM,RBFNN和MLPNN之类的分类器实际上是用于许多应用程序问题的本地学习机,它们认为与训练样本接近的未知样本更为重要。在本文中,我们提出了一种局部化的泛化误差模型,该模型使用随机敏感度度量(期望平方的输出扰动)在训练样本的邻域内超出泛化误差。然后,通过指定泛化误差阈值,将其用于为分类器开发模型选择技术,以最大程度覆盖未见样本。通过使用八个真实世界的数据集进行的实验表明,与交叉验证,顺序学习和其他两种即席方法相比,我们的技术始终如一地产生了最佳的测试分类准确性,同时隐藏神经元更少,训练时间更少。

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