We propose a new computationally efficient test for conditional independence based on the $L^{p}$ distance between two kernel-based representatives of well suited distributions. By evaluating the difference of these two representatives at a finite set of locations, we derive a finite dimensional approximation of the $L^{p}$ metric, obtain its asymptotic distribution under the null hypothesis of conditional independence and design a simple statistical test from it. The test obtained is consistent and computationally efficient. We conduct a series of experiments showing that the performance of our new tests outperforms state-of-the-art methods both in term of statistical power and type-I error even in the high dimensional setting.
翻译:我们提议根据两个以内核为基础的、分布非常合适的代表之间的距离,对有条件独立进行新的计算效率测试。通过在一定地点对这两位代表的差异进行评估,我们得出了美元标准的有限维近似值,在无条件独立假设下获得无症状分布,并从中设计了一个简单的统计测试。获得的测试是一致的,在计算上是有效的。我们进行了一系列实验,表明我们新测试的性能在统计实力和类型一错误方面都超过了最先进的方法,即使在高维环境下也是如此。