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Conditional Independence Testing in Hilbert Spaces with Applications to Functional Data Analysis

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arxiv 2101.07108 v3 pith:CLFJ6F2R submitted 2021-01-18 math.ST stat.MEstat.TH

Conditional Independence Testing in Hilbert Spaces with Applications to Functional Data Analysis

classification math.ST stat.MEstat.TH
keywords functionaltestingmodeltestdatalinearregressionadditionally
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We study the problem of testing the null hypothesis that X and Y are conditionally independent given Z, where each of X, Y and Z may be functional random variables. This generalises testing the significance of X in a regression model of scalar response Y on functional regressors X and Z. We show however that even in the idealised setting where additionally (X, Y, Z) has a Gaussian distribution, the power of any test cannot exceed its size. Further modelling assumptions are needed and we argue that a convenient way of specifying these is based on choosing methods for regressing each of X and Y on Z. We propose a test statistic involving inner products of the resulting residuals that is simple to compute and calibrate: type I error is controlled uniformly when the in-sample prediction errors are sufficiently small. We show this requirement is met by ridge regression in functional linear model settings without requiring any eigen-spacing conditions or lower bounds on the eigenvalues of the covariance of the functional regressor. We apply our test in constructing confidence intervals for truncation points in truncated functional linear models and testing for edges in a functional graphical model for EEG data.

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