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A Study On The Use Of Statistical Tests For Experimentation With Neural Networks: Analysis Of Parametric Test Conditions And Non-parametric Tests

机译:统计测试用于神经网络实验的研究:参数测试条件和非参数测试的分析

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摘要

In this paper, we focus on the experimental analysis on the performance in artificial neural networks with the use of statistical tests on the classification task. Particularly, we have studied whether the sample of results from multiple trials obtained by conventional artificial neural networks and support vector machines checks the necessary conditions for being analyzed through parametrical tests. The study is conducted by considering three possibilities on classification experiments: random variation in the selection of test data, the selection of training data and internal randomness in the learning algorithm.rnThe results obtained state that the fulfillment of these conditions are problem-dependent and indefinite, which justifies the need of using non-parametric statistics in the experimental analysis.
机译:在本文中,我们将重点放在对人工神经网络性能的实验分析上,并对分类任务进行统计检验。特别是,我们研究了通过常规人工神经网络和支持向量机获得的多次试验结果样本是否检查了通过参数检验进行分析的必要条件。这项研究是通过考虑分类实验的三种可能性来进行的:测试数据选择中的随机变化,训练算法中的选择和学习算法中的内部随机性。rn获得的结果表明,满足这些条件是问题相关且不确定的,这证明在实验分析中需要使用非参数统计信息。

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