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Quasi-Bayesian Dual Instrumental Variable Regression

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Recent years have witnessed an upsurge of interest in employing flexible machine learning models for instrumental variable (IV) regression, but the development of uncertainty quantification methodology is still lacking. In this work we present a novel quasi-Bayesian procedure for IV regression, building upon the recently developed kernelized IV models and the dual/minimax formulation of IV regression. We analyze the frequentist behavior of the proposed method, by establishing minimax optimal contraction rates in $L_2$ and Sobolev norms, and discussing the frequentist validity of credible balls. We further derive a scalable inference algorithm which can be extended to work with wide neural network models. Empirical evaluation shows that our method produces informative uncertainty estimates on complex high-dimensional problems.

Ziyu Wang, Yuhao Zhou, Tongzheng Ren, Jun Zhu• 2021

Related benchmarks

TaskDatasetResultRank
Instrumental Variable Estimationsine n=200
MSE0.176
8
Instrumental Variable Estimationsine n=500
MSE0.117
4
Instrumental Variable Estimationsine n=1000
MSE0.087
4
Instrumental Variable Estimationlinear (n=1000)
MSE0.069
4
Instrumental Variable Estimationdemand n=200
Normalized MSE0.632
4
Instrumental Variable Estimationdemand n=500
Normalized MSE0.52
4
Instrumental Variable Estimationdemand n=1000
Normalized MSE0.429
4
Uncertainty Quantificationdemand IV design
AUC90.4
4
Instrumental Variable Estimationlog n=500
MSE0.124
4
Instrumental Variable Estimationlog n=1000
MSE0.09
4
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