Covariate-Powered Empirical Bayes Estimation

06/04/2019
by   Nikolaos Ignatiadis, et al.
0

We study methods for simultaneous analysis of many noisy experiments in the presence of rich covariate information. The goal of the analyst is to optimally estimate the true effect underlying each experiment. Both the noisy experimental results and the auxiliary covariates are useful for this purpose, but neither data source on its own captures all the information available to the analyst. In this paper, we propose a flexible plug-in empirical Bayes estimator that synthesizes both sources of information and may leverage any black-box predictive model. We show that our approach is within a constant factor of minimax for a simple data-generating model. Furthermore, we establish robust convergence guarantees for our method that hold under considerable generality, and exhibit promising empirical performance on both real and simulated data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/08/2018

Black Box FDR

Analyzing large-scale, multi-experiment studies requires scientists to t...
research
08/11/2023

Empirical Bayes Estimation with Side Information: A Nonparametric Integrative Tweedie Approach

We investigate the problem of compound estimation of normal means while ...
research
08/29/2020

Empirical Likelihood Weighted Estimation of Average Treatment Effects

There has been growing attention on how to effectively and objectively u...
research
09/05/2019

Covariate Selection for Generalizing Experimental Results

Scientists are interested in generalizing causal effects estimated in an...
research
01/11/2019

Minimax Linear Estimation of the Retargeted Mean

Weighting methods that adjust for observed covariates, such as inverse p...
research
06/09/2022

Empirical Bayes approach to Truth Discovery problems

When aggregating information from conflicting sources, one's goal is to ...

Please sign up or login with your details

Forgot password? Click here to reset