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Multiple Comparison Procedures for Determining the Optimal Complexity of a Model

机译:用于确定模型的最佳复杂性的多个比较过程

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We aim to determine which of a set of competing models is statistically best, that is, on average. A way to define “on average” is to consider the performance of these algorithms averaged over all the training sets that might be drawn from the underlying distribution. When comparing more than two means, an ANOVA F-test tells you whether the means are significantly different, but it does not tell you which means differ from each other. A simple approach is to test each possible difference by a paired t-test. However, the probability of making at least one type I error increases with the number of tests made. Multiple comparison procedures provide different solutions. We discuss these techniques and apply the well-known Bonferroni method in order to determine the optimal degree in polynomial fitting and the optimal number of hidden neurons in feedforward neural networks.
机译:我们的目标是确定一组竞争模式在统计上最佳,即平均而言。定义“平均”的方法是考虑这些算法的性能,这些算法在可能从底层分布中汲取的所有训练集上。比较多于两种方法时,ANOVA F-TEST告诉您手段是否显着不同,但它不会告诉您哪种方式彼此不同。一种简单的方法是通过配对的T检验来测试每个可能的差异。然而,制造至少一种I误差的概率随着测试的数量而增加。多个比较程序提供不同的解决方案。我们讨论这些技术并应用众所周知的Bonferroni方法,以确定多项式拟合的最佳程度和前馈神经网络中的隐藏神经元的最佳数量。

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