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The Generalization Complexity Measure for Continuous Input Data

机译:广义复杂度测度连续输入数据

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摘要

We introduce in this work an extension for the generalization complexity measure to continuous input data. The measure, originally defined in Boolean space, quantifies the complexity of data in relationship to the prediction accuracy that can be expected when using a supervised classifier like a neural network, SVM, and so forth. We first extend the original measure for its use with continuous functions to later on, using an approach based on the use of the set of Walsh functions, consider the case of having a finite number of data points (inputs/outputs pairs), that is, usually the practical case. Using a set of trigonometric functions a model that gives a relationship between the size of the hidden layer of a neural network and the complexity is constructed. Finally, we demonstrate the application of the introduced complexity measure, by using the generated model, to the problem of estimating an adequate neural network architecture for real-world data sets.
机译:在这项工作中,我们将泛化复杂性度量的扩展引入到连续输入数据中。最初在布尔空间中定义的度量与使用神经网络,SVM等监督分类器时可以预期的预测精度相关的数据的复杂性得以量化。我们首先将使用连续函数的原始量度扩展到以后,使用基于沃尔什函数集的方法,考虑具有有限数量的数据点(输入/输出对)的情况,即,通常是实际情况。使用一组三角函数,可以构建一个模型,该模型给出神经网络隐藏层的大小与复杂性之间的关系。最后,我们使用生成的模型演示了引入的复杂性度量在估计实际数据集的适当神经网络体系结构问题上的应用。

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