We prove the validity of a non-overlapping block bootstrap for the empirical distance covariance under the assumption of strictly stationary and absolutely regular sample data. From this, we develop a test for independence of two strictly stationary and absolutely regular processes. In proving our results, we derive explicit bounds on the expected Wasserstein distance between an empirical measure and its limit for strictly stationary and strongly mixing sample sequences.
翻译:我们证明一个不重叠的区块护栏对于在严格固定和绝对固定的样本数据假设下的经验距离共变有效。 从这个假设中,我们开发了两种严格固定和绝对固定的常规程序的独立性测试。 在证明我们的结果时,我们获得了关于一项实证措施与严格固定和强烈混合样本序列的限度之间预期瓦森斯坦距离的明确界限。