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An Adaptive Test of Independence with Analytic Kernel Embeddings

机译:与分析内核嵌入式独立性的自适应测试

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A new computationally efficient dependence measure, and an adaptive statistical test of independence, are proposed. The dependence measure is the difference between analytic embeddings of the joint distribution and the product of the marginals, evaluated at a finite set of locations (features). These features are chosen so as to maximize a lower bound on the test power, resulting in a test that is data-efficient, and that runs in linear time (with respect to the sample size n). The optimized features can be interpreted as evidence to reject the null hypothesis, indicating regions in the joint domain where the joint distribution and the product of the marginals differ most. Consistency of the independence test is established, for an appropriate choice of features. In real-world benchmarks, independence tests using the optimized features perform comparably to the state-of-the-art quadratic-time HSIC test, and outperform competing O(n) and O(n log n) tests.
机译:提出了一种新的计算有效的依赖措施和独立性的自适应统计测试。依赖措施是在有限的位置(特征)的有限位置评估的接头分布和边缘的产品的分析嵌入与边缘的乘积之间的差异。选择这些功能以最大化测试电源的下限,从而导致数据有效的测试,并且在线性时间(相对于样本大小N)运行。优化的特征可以被解释为拒绝零假设的证据,指示联合域中的区域,其中关节分布和边际的产物最差。建立了独立测试的一致性,以适当的特征选择。在现实世界基准测试中,使用优化功能的独立测试相当于最先进的二次时间HSIC测试,并且优于竞争对手O(n)和O(n log n)测试。

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