Teaching Key Machine Learning Principles Using Anti-learning Datasets

C. Roadknight, Prapa Rattadilok, U. Aickelin
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引用次数: 2

Abstract

Much of the teaching of machine learning focuses on iterative hill-climbing approaches and the use of local knowledge to gain information leading to local or global maxima. In this paper we advocate the teaching of alternative methods of generalising to the best possible solution, including a method called anti-learning. By using simple teaching methods, students can achieve a deeper understanding of the importance of validation on data excluded from the training process and that each problem requires its own methods to solve. We also exemplify the requirement to train a model using sufficient data by showing that different granularities of cross-validation can yield very different results.
使用反学习数据集教授关键机器学习原理
机器学习的教学主要集中在迭代爬坡方法和使用局部知识来获取导致局部或全局最大值的信息。在本文中,我们提倡教授泛化到最佳可能解决方案的替代方法,包括一种称为反学习的方法。通过使用简单的教学方法,学生可以更深入地了解对训练过程中排除的数据进行验证的重要性,以及每个问题都需要自己的方法来解决。我们还举例说明了使用足够的数据来训练模型的需求,表明不同粒度的交叉验证可以产生非常不同的结果。
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