Empirical Gateaux Derivatives for Causal Inference Michael I. Jordan
–Neural Information Processing Systems
We study a constructive algorithm that approximates Gateaux derivatives for statistical functionals by finite differencing, with a focus on functionals that arise in causal inference. We study the setting where probability distributions are not known a priori but need to be estimated from data. These estimated distributions lead to empirical Gateaux derivatives, and we study the relationships between empirical, numerical, and analytical Gateaux derivatives.
Neural Information Processing Systems
Nov-13-2025, 23:48:14 GMT
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