分类问题中Bootstrap将数据分成训练集和测试集的比例

IF 1.2 Q4 BUSINESS Business Systems Research Journal Pub Date : 2021-05-01 DOI:10.2478/bsrj-2021-0015
Borislava Vrigazova
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引用次数: 48

摘要

背景:bootstrap可以替代交叉验证作为一种训练/测试集分割方法,因为与十倍交叉验证相比,它最小化了分类问题的计算时间。目标:Тhis研究调查应该使用什么比例来将数据集分成训练集和测试集,以便自举可能在准确性方面与其他重采样方法具有竞争力。方法/方法:使用不同的训练/测试分割比例,采用以下重采样方法:自举、留一交叉验证、十倍交叉验证和随机重复训练/测试分割,测试它们在几种分类方法上的性能。使用的分类方法包括逻辑回归、决策树和k近邻。结果:研究结果表明,当应用于逻辑回归和决策树时,使用不同的测试集结构(例如30/70、20/80)可以进一步优化bootstrap的性能。对于k近邻,建议使用70/30的训练/测试分割比率进行10倍交叉验证。结论:根据变量的特征和初步变换,自举法可以提高分类问题的准确率。
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The Proportion for Splitting Data into Training and Test Set for the Bootstrap in Classification Problems
Abstract Background: The bootstrap can be alternative to cross-validation as a training/test set splitting method since it minimizes the computing time in classification problems in comparison to the tenfold cross-validation. Objectives: Тhis research investigates what proportion should be used to split the dataset into the training and the testing set so that the bootstrap might be competitive in terms of accuracy to other resampling methods. Methods/Approach: Different train/test split proportions are used with the following resampling methods: the bootstrap, the leave-one-out cross-validation, the tenfold cross-validation, and the random repeated train/test split to test their performance on several classification methods. The classification methods used include the logistic regression, the decision tree, and the k-nearest neighbours. Results: The findings suggest that using a different structure of the test set (e.g. 30/70, 20/80) can further optimize the performance of the bootstrap when applied to the logistic regression and the decision tree. For the k-nearest neighbour, the tenfold cross-validation with a 70/30 train/test splitting ratio is recommended. Conclusions: Depending on the characteristics and the preliminary transformations of the variables, the bootstrap can improve the accuracy of the classification problem.
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CiteScore
3.00
自引率
6.70%
发文量
0
审稿时长
22 weeks
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