scholarly journals Model Selection for Treatment Choice: Penalized Welfare Maximization

Econometrica ◽  
2021 ◽  
Vol 89 (2) ◽  
pp. 825-848
Author(s):  
Eric Mbakop ◽  
Max Tabord-Meehan

This paper studies a penalized statistical decision rule for the treatment assignment problem. Consider the setting of a utilitarian policy maker who must use sample data to allocate a binary treatment to members of a population, based on their observable characteristics. We model this problem as a statistical decision problem where the policy maker must choose a subset of the covariate space to assign to treatment, out of a class of potential subsets. We focus on settings in which the policy maker may want to select amongst a collection of constrained subset classes: examples include choosing the number of covariates over which to perform best‐subset selection, and model selection when approximating a complicated class via a sieve. We adapt and extend results from statistical learning to develop the Penalized Welfare Maximization (PWM) rule. We establish an oracle inequality for the regret of the PWM rule which shows that it is able to perform model selection over the collection of available classes. We then use this oracle inequality to derive relevant bounds on maximum regret for PWM. An important consequence of our results is that we are able to formalize model‐selection using a “holdout” procedure, where the policy maker would first estimate various policies using half of the data, and then select the policy which performs the best when evaluated on the other half of the data.

Author(s):  
Charles F. Manski

This chapter considers reasonable decision making with sample data from randomized trials. It continues discussion of reasonable patient care under uncertainty. Because of its centrality to evidence-based medicine, the chapter focuses on the use of sample trial data in treatment choice. Moreover, having already addressed identification, the chapter considers only statistical imprecision, as has been the case in the statistical literature on trials. The Wald (1950) development of statistical decision theory provides a coherent framework for use of sample data to make decisions. A body of recent research applies statistical decision theory to determine treatment choices that achieve adequate performance in all states of nature, in the sense of maximum regret. This chapter describes the basic ideas and findings, which provide an appealing practical alternative to use of hypothesis tests.


2021 ◽  
Vol 13 (13) ◽  
pp. 2489
Author(s):  
Lanlan Rao ◽  
Jian Xu ◽  
Dmitry S. Efremenko ◽  
Diego G. Loyola ◽  
Adrian Doicu

To retrieve aerosol properties from satellite measurements, micro-physical aerosol models have to be assumed. Due to the spatial and temporal inhomogeneity of aerosols, choosing an appropriate aerosol model is an important task. In this paper, we use a Bayesian algorithm that takes into account model uncertainties to retrieve the aerosol optical depth and layer height from synthetic and real TROPOMI O2A band measurements. The results show that in case of insufficient information for an appropriate micro-physical model selection, the Bayesian algorithm improves the accuracy of the solution.


AIChE Journal ◽  
2017 ◽  
Vol 64 (3) ◽  
pp. 822-834 ◽  
Author(s):  
Hong Zhao ◽  
Chunhui Zhao ◽  
Chengxia Yu ◽  
Eyal Dassau

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