Selecting Valid Instrumental Variables in Linear Models with Multiple Exposure Variables: Adaptive Lasso and the Median-of-Medians Estimator
In a linear instrumental variables (IV) setting for estimating the causal effects of multiple confounded exposure/treatment variables on an outcome, we investigate the adaptive Lasso method for selecting valid instrumental variables from a set of available instruments that may contain invalid ones....
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Zusammenfassung: | In a linear instrumental variables (IV) setting for estimating the causal
effects of multiple confounded exposure/treatment variables on an outcome, we
investigate the adaptive Lasso method for selecting valid instrumental
variables from a set of available instruments that may contain invalid ones. An
instrument is invalid if it fails the exclusion conditions and enters the model
as an explanatory variable. We extend the results as developed in Windmeijer et
al. (2019) for the single exposure model to the multiple exposures case. In
particular we propose a median-of-medians estimator and show that the
conditions on the minimum number of valid instruments under which this
estimator is consistent for the causal effects are only moderately stronger
than the simple majority rule that applies to the median estimator for the
single exposure case. The adaptive Lasso method which uses the initial
median-of-medians estimator for the penalty weights achieves consistent
selection with oracle properties of the resulting IV estimator. This is
confirmed by some Monte Carlo simulation results. We apply the method to
estimate the causal effects of educational attainment and cognitive ability on
body mass index (BMI) in a Mendelian Randomization setting. |
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DOI: | 10.48550/arxiv.2208.05278 |