Minimax Estimation of Conditional Moment Models
Nishanth Dikkala, Greg Lewis, Lester Mackey, Vasilis Syrgkanis

TL;DR
This paper introduces a minimax estimation framework for models with conditional moment restrictions, providing theoretical analysis, practical algorithms, and applications to various hypothesis spaces including neural networks.
Contribution
It develops a novel minimax criterion for estimating conditional moment models, analyzes its statistical properties, and offers computational methods for diverse hypothesis spaces.
Findings
Estimation rates depend on the critical radius of hypothesis and test function spaces.
Regularization with second moment penalty improves estimation accuracy.
The approach is effective for neural networks, kernel methods, and sparse linear models.
Abstract
We develop an approach for estimating models described via conditional moment restrictions, with a prototypical application being non-parametric instrumental variable regression. We introduce a min-max criterion function, under which the estimation problem can be thought of as solving a zero-sum game between a modeler who is optimizing over the hypothesis space of the target model and an adversary who identifies violating moments over a test function space. We analyze the statistical estimation rate of the resulting estimator for arbitrary hypothesis spaces, with respect to an appropriate analogue of the mean squared error metric, for ill-posed inverse problems. We show that when the minimax criterion is regularized with a second moment penalty on the test function and the test function space is sufficiently rich, then the estimation rate scales with the critical radius of the…
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Taxonomy
TopicsStatistical Methods and Inference · Gaussian Processes and Bayesian Inference · Probabilistic and Robust Engineering Design
