Following the line of classification-based two-sample testing, tests based on the Random Forest classifier are proposed. The developed tests are easy to use, require almost no tuning, and are applicable for any distribution on $\mathbb{R}^d$. Furthermore, the built-in variable importance measure of the Random Forest gives potential insights into which variables make out the difference in distribution. An asymptotic power analysis for the proposed tests is developed. Finally, two real-world applications illustrate the usefulness of the introduced methodology. To simplify the use of the method, the R-package "hypoRF" is provided.
翻译:根据基于分类的两样样测试的线条,提议以随机森林分类器为基础进行测试。开发的测试很容易使用,几乎不需要调整,并且适用于任何以$\mathbb{R ⁇ d$分配的测试。此外,随机森林的内在可变重要性测量可能揭示出哪些变量可以导致分布的差别。为拟议的测试开发了无症状功率分析。最后,两个现实世界的应用说明了采用的方法的有用性。为简化方法的使用,提供了R-包装“HypoRF”。