带自举验证的模型选择

Rafael Savvides, Jarmo Mäkelä, K. Puolamäki
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引用次数: 1

摘要

模型选择是监督学习中最核心的任务之一。验证集方法是完成此任务的标准方法:在训练数据上训练模型,并选择在验证数据上损失最小的模型。然而,通常不清楚需要多少验证数据才能做出可靠的选择,当标记数据稀缺或昂贵时,这是必不可少的。我们提出了一种基于bootstrap的算法,bootstrap验证(BSV),它使用bootstrap来调整验证集的大小,并在用户指定的公差参数内找到性能最佳的模型。我们发现BSV在实践中工作得很好,可以作为验证集方法或k - fold交叉验证的替代方法。BSV的主要优点是通常需要较少的验证数据,因此可以使用更多的数据来训练模型,从而获得更好的近似值并有效地使用验证数据。
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Model selection with bootstrap validation
Model selection is one of the most central tasks in supervised learning. Validation set methods are the standard way to accomplish this task: models are trained on training data, and the model with the smallest loss on the validation data is selected. However, it is generally not obvious how much validation data is required to make a reliable selection, which is essential when labeled data are scarce or expensive. We propose a bootstrap‐based algorithm, bootstrap validation (BSV), that uses the bootstrap to adjust the validation set size and to find the best‐performing model within a tolerance parameter specified by the user. We find that BSV works well in practice and can be used as a drop‐in replacement for validation set methods or k‐fold cross‐validation. The main advantage of BSV is that less validation data is typically needed, so more data can be used to train the model, resulting in better approximations and efficient use of validation data.
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