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Causal Inference with Noisy and Missing Covariates via Matrix Factorization

Neural Information Processing Systems

Valid causal inference in observational studies often requires controlling for confounders. However, in practice measurements of confounders may be noisy, and can lead to biased estimates of causal effects. We show that we can reduce bias induced by measurement noise using a large number of noisy measurements of the underlying confounders. We propose the use of matrix factorization to infer the confounders from noisy covariates. This flexible and principled framework adapts to missing values, accommodates a wide variety of data types, and can enhance a wide variety of causal inference methods. We bound the error for the induced average treatment effect estimator and show it is consistent in a linear regression setting, using Exponential Family Matrix Completion preprocessing. We demonstrate the effectiveness of the proposed procedure in numerical experiments with both synthetic data and real clinical data.


Reviews: Causal Inference with Noisy and Missing Covariates via Matrix Factorization

Neural Information Processing Systems

Details: 74: typo'marix' 69-81: bit compact for the large body of related work 97: '.. treatment and control respectively' this suggest 0 treatment, 1 control … 115: perhaps a small figure depicting system model would be nice here … 149: '.. so long as the .. not vanish too fast' given a concrete example of where this is the case 169: MCAR is usually a rather strong/unrealistic assumption in psychometric tests, but ok … 172: '.. exp.family noise mechanism'.


Causal Inference with Noisy and Missing Covariates via Matrix Factorization

Kallus, Nathan, Mao, Xiaojie, Udell, Madeleine

Neural Information Processing Systems

Valid causal inference in observational studies often requires controlling for confounders. However, in practice measurements of confounders may be noisy, and can lead to biased estimates of causal effects. We show that we can reduce bias induced by measurement noise using a large number of noisy measurements of the underlying confounders. We propose the use of matrix factorization to infer the confounders from noisy covariates. This flexible and principled framework adapts to missing values, accommodates a wide variety of data types, and can enhance a wide variety of causal inference methods.