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Differentially Private Covariate Balancing Causal Inference

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arxiv 2410.14789 v2 pith:NB54NUHV submitted 2024-10-18 stat.ME cs.CRcs.LG

Differentially Private Covariate Balancing Causal Inference

classification stat.ME cs.CRcs.LG
keywords datacausalcovariateprivacyprivatealgorithmbalancingdifferentially
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Differential privacy is the leading mathematical framework for privacy protection, providing a probabilistic guarantee that safeguards individuals' private information when publishing statistics from a dataset. This guarantee is achieved by applying a randomized algorithm to the original data, which introduces unique challenges in data analysis by distorting inherent patterns. In particular, causal inference using observational data in privacy-sensitive contexts is challenging because it requires covariate balance between treatment groups, yet checking the true covariates is prohibited to prevent leakage of sensitive information. In this article, we present a differentially private two-stage covariate balancing weighting estimator to infer causal effects from observational data. Our algorithm produces both point and interval estimators with statistical guarantees, such as consistency and rate optimality, under a given privacy budget.

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  1. Workload-Preserving Differentially Private Synthetic Data for Causal Inference via Maximum-Entropy Calibration

    cs.LG 2026-07 conditional novelty 7.0

    Causal workloads that privately measure orthogonal treatment and outcome moments enable reusable DP synthetic data with calibrated ATE/ATT/subgroup intervals, at the cost of a fidelity–utility tradeoff versus generic ...