Activity Number:
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277
- ASA Student Paper Competition Winners
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Type:
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Topic-Contributed
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Date/Time:
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Wednesday, August 11, 2021 : 1:30 PM to 3:20 PM
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Sponsor:
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Government Statistics Section
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Abstract #317406
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Title:
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Inference from Non-Random Samples Using Bayesian Machine Learning
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Author(s):
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Yutao Liu* and Andrew Gelman and Qixuan Chen
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Companies:
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Vertex Pharmaceuticals, Inc. and Columbia University and Columbia University
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Keywords:
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Bayesian machine learning;
High-dimensional auxiliary variables;
Non-random samples;
Probability and non-probability surveys;
Propensity score;
Soft Bayesian additive regression trees
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Abstract:
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We consider inference from non-random samples in data-rich settings where high-dimensional auxiliary information is available both in the sample and the target population, with survey inference being a special case. We propose a regularized prediction approach that predicts the outcomes in the population using a large number of auxiliary variables such that the ignorability assumption is reasonable while the Bayesian framework is straightforward for quantification of uncertainty. Besides the auxiliary variables, inspired by Little and An (2004), we also extend the approach by estimating the propensity score for a unit to be included in the sample and also including it as a predictor in the machine learning models. We show through simulation studies that the regularized predictions using soft Bayesian additive regression trees (SBART) yield valid inference for the population means and coverage rates close to the nominal levels. We demonstrate the application of the proposed methods using two different real data applications, one in a survey and one in an epidemiology study.
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Authors who are presenting talks have a * after their name.