Conformal prediction has been a very popular method of distribution-free predictive inference in recent years in machine learning and statistics. Its popularity stems from the fact that it works as a wrapper around any prediction algorithm such as neural networks or random forests. Exchangeability is at the core of the validity of conformal prediction. The concept of exchangeability is also at the core of rank tests widely known in nonparametric statistics. In this paper, we review the concept of exchangeability and discuss the implications for conformal prediction and rank tests. We provide a low-level introduction to these topics, and discuss the similarities between conformal prediction and rank tests.
翻译:近年来,在机器学习和统计方面,非正规预测一直是非常流行的无分布预测推论方法,其受欢迎性来自这样一个事实,即它是围绕神经网络或随机森林等任何预测算法的包装。可交换性是符合预测有效性的核心。可交换性概念也是非参数统计中广为人知的等级测试的核心。在本文件中,我们审查了可交换性概念,并讨论了对符合预测和等级测试的影响。我们对这些专题进行了低层次的介绍,并讨论了符合预测和等级测试之间的相似之处。