In this article, we study tests of independence for data with arbitrary distributions in the non-serial case, i.e., for independent and identically distributed random vectors, as well as in the serial case, i.e., for time series. These tests are derived from copula-based covariances and their multivariate extensions using M\"obius transforms. We find the asymptotic distributions of the statistics under the null hypothesis of independence or randomness, as well as under contiguous alternatives. This enables us to find out locally most powerful test statistics for some alternatives, whatever the margins. Numerical experiments are performed for Wald's type combinations of these statistics to assess the finite sample performance.
翻译:在本文中,我们研究了任意分布数据的非串行独立性检验,即对于独立同分布的随机向量,以及串行情况下的独立性检验,即对于时间序列。这些测试来自于基于copula的协方差以及它们的多元扩展,使用 M\"obius 转换。我们发现,在独立性或随机性的零假设下,以及在连续的替代假设下,统计量的渐近分布。这使我们能够找到大多数替代假设下的最强力测试统计量,无论边际如何。使用这些统计量的 Wald 组合进行数值实验,以评估有限样本性能。