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Noise-injected neural networks show promise for use on small-sample expression data

机译:噪声注入神经网络显示出有望用于小样本表达数据

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摘要

BackgroundOverfitting the data is a salient issue for classifier design in small-sample settings. This is why selecting a classifier from a constrained family of classifiers, ones that do not possess the potential to too finely partition the feature space, is typically preferable. But overfitting is not merely a consequence of the classifier family; it is highly dependent on the classification rule used to design a classifier from the sample data. Thus, it is possible to consider families that are rather complex but for which there are classification rules that perform well for small samples. Such classification rules can be advantageous because they facilitate satisfactory classification when the class-conditional distributions are not easily separated and the sample is not large. Here we consider neural networks, from the perspectives of classical design based solely on the sample data and from noise-injection-based design.
机译:背景对于小样本设置中的分类器设计,数据过度拟合是一个突出的问题。这就是为什么通常最好从受约束的分类器系列中选择分类器,这些分类器不具有对特征空间进行精细划分的潜力。但是,过度拟合不仅仅是分类器系列的结果;它高度依赖于用于根据样本数据设计分类器的分类规则。因此,有可能考虑相当复杂的家庭,但是对于小样本来说,对于这些家庭来说,分类规则表现良好。这样的分类规则是有利的,因为当不容易分离类别条件分布并且样本不大时,它们有助于令人满意的分类。在这里,我们从单纯基于样本数据的经典设计和基于噪声注入的设计的角度考虑神经网络。

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