Differentially Private Conditional Independence Testing

06/11/2023
by   Iden Kalemaj, et al.
0

Conditional independence (CI) tests are widely used in statistical data analysis, e.g., they are the building block of many algorithms for causal graph discovery. The goal of a CI test is to accept or reject the null hypothesis that X ⊥⊥ Y | Z, where X ∈ℝ, Y ∈ℝ, Z ∈ℝ^d. In this work, we investigate conditional independence testing under the constraint of differential privacy. We design two private CI testing procedures: one based on the generalized covariance measure of Shah and Peters (2020) and another based on the conditional randomization test of Candès et al. (2016) (under the model-X assumption). We provide theoretical guarantees on the performance of our tests and validate them empirically. These are the first private CI tests that work for the general case when Z is continuous.

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