In this paper, we study learning in probabilistic domains where the learner may receive incorrect labels but can improve the reliability of labels by repeatedly sampling them. In such a setting, one faces the problem of whether the fixed budget for obtaining training examples should rather be used for obtaining all different examples or for improving the label quality of a smaller number of examples by re-sampling their labels. We motivate this problem in an application to compare the strength of poker hands where the training signal depends on the hidden community cards, and then study it in depth in an artificial setting where we insert controlled noise levels into the MNIST database. Our results show that with increasing levels of noise, resampling previous examples becomes increasingly more important than obtaining new examples, as classifier performance deteriorates when the number of incorrect labels is too high. In addition, we propose two different validation strategies; switching from lower to higher validations over the course of training and using chi-square statistics to approximate the confidence in obtained labels.
翻译:在本文中,我们研究概率学,学习者可能获得不正确的标签,但可以通过反复抽样来提高标签的可靠性。在这样的背景下,我们面临这样一个问题:获得培训范例的固定预算是否应该用来获取所有不同的例子,还是应该用来通过重新取样其标签来提高较少例子的标签质量。我们用一个应用程序来比较培训信号取决于隐藏社区卡的扑克手的强度来推动这一问题,然后在人工环境中进行深入研究,在人工环境中我们把受控的噪音水平插入MNIST数据库。我们的结果显示,随着噪音水平的上升,重现以前的例子变得比获取新例子更加重要,因为当错误标签的数量太高时,分类的性能会恶化。此外,我们提出了两种不同的验证战略:从训练课程的低到高的验证方法,并使用奇夸的统计来估计对获得标签的信心。