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Main Authors: Shao, Daqian, Soleymani, Ashkan, Quinzan, Francesco, Kwiatkowska, Marta
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.08498
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author Shao, Daqian
Soleymani, Ashkan
Quinzan, Francesco
Kwiatkowska, Marta
author_facet Shao, Daqian
Soleymani, Ashkan
Quinzan, Francesco
Kwiatkowska, Marta
contents A common issue in learning decision-making policies in data-rich settings is spurious correlations in the offline dataset, which can be caused by hidden confounders. Instrumental variable (IV) regression, which utilises a key unconfounded variable known as the instrument, is a standard technique for learning causal relationships between confounded action, outcome, and context variables. Most recent IV regression algorithms use a two-stage approach, where a deep neural network (DNN) estimator learnt in the first stage is directly plugged into the second stage, in which another DNN is used to estimate the causal effect. Naively plugging the estimator can cause heavy bias in the second stage, especially when regularisation bias is present in the first stage estimator. We propose DML-IV, a non-linear IV regression method that reduces the bias in two-stage IV regressions and effectively learns high-performing policies. We derive a novel learning objective to reduce bias and design the DML-IV algorithm following the double/debiased machine learning (DML) framework. The learnt DML-IV estimator has strong convergence rate and $O(N^{-1/2})$ suboptimality guarantees that match those when the dataset is unconfounded. DML-IV outperforms state-of-the-art IV regression methods on IV regression benchmarks and learns high-performing policies in the presence of instruments.
format Preprint
id arxiv_https___arxiv_org_abs_2405_08498
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Learning Decision Policies with Instrumental Variables through Double Machine Learning
Shao, Daqian
Soleymani, Ashkan
Quinzan, Francesco
Kwiatkowska, Marta
Machine Learning
A common issue in learning decision-making policies in data-rich settings is spurious correlations in the offline dataset, which can be caused by hidden confounders. Instrumental variable (IV) regression, which utilises a key unconfounded variable known as the instrument, is a standard technique for learning causal relationships between confounded action, outcome, and context variables. Most recent IV regression algorithms use a two-stage approach, where a deep neural network (DNN) estimator learnt in the first stage is directly plugged into the second stage, in which another DNN is used to estimate the causal effect. Naively plugging the estimator can cause heavy bias in the second stage, especially when regularisation bias is present in the first stage estimator. We propose DML-IV, a non-linear IV regression method that reduces the bias in two-stage IV regressions and effectively learns high-performing policies. We derive a novel learning objective to reduce bias and design the DML-IV algorithm following the double/debiased machine learning (DML) framework. The learnt DML-IV estimator has strong convergence rate and $O(N^{-1/2})$ suboptimality guarantees that match those when the dataset is unconfounded. DML-IV outperforms state-of-the-art IV regression methods on IV regression benchmarks and learns high-performing policies in the presence of instruments.
title Learning Decision Policies with Instrumental Variables through Double Machine Learning
topic Machine Learning
url https://arxiv.org/abs/2405.08498