Recently, the binary expansion testing framework was introduced to test the independence of two continuous random variables by utilizing symmetry statistics that are complete sufficient statistics for dependence. We develop a new test based on an ensemble approach that uses the sum of squared symmetry statistics and distance correlation. Simulation studies suggest that this method improves the power while preserving the clear interpretation of the binary expansion testing. We extend this method to tests of independence of random vectors in arbitrary dimension. Through random projections, the proposed binary expansion randomized ensemble test transforms the multivariate independence testing problem into a univariate problem. Simulation studies and data example analyses show that the proposed method provides relatively robust performance compared with existing methods.
翻译:最近,引入了二进制扩展测试框架,以测试两个连续随机变量的独立性,方法是利用对称性统计数据,这些统计数据足以说明依赖性。我们根据混合法开发了一个新的测试方法,使用平方对称统计数据和距离相关关系的总和。模拟研究表明,这种方法在保持对二进制扩展测试的明确解释的同时,提高了力量。我们将这种方法扩大到任意性的随机矢量独立测试。通过随机预测,拟议中的二进制扩展随机共通性测试将多变独立测试问题转化为一个非静态问题。模拟研究和数据实例分析表明,与现有方法相比,拟议方法提供了相对稳健的性能。