Full metadata
Title
Propensity score estimation with random forests
Description
Random Forests is a statistical learning method which has been proposed for propensity score estimation models that involve complex interactions, nonlinear relationships, or both of the covariates. In this dissertation I conducted a simulation study to examine the effects of three Random Forests model specifications in propensity score analysis. The results suggested that, depending on the nature of data, optimal specification of (1) decision rules to select the covariate and its split value in a Classification Tree, (2) the number of covariates randomly sampled for selection, and (3) methods of estimating Random Forests propensity scores could potentially produce an unbiased average treatment effect estimate after propensity scores weighting by the odds adjustment. Compared to the logistic regression estimation model using the true propensity score model, Random Forests had an additional advantage in producing unbiased estimated standard error and correct statistical inference of the average treatment effect. The relationship between the balance on the covariates' means and the bias of average treatment effect estimate was examined both within and between conditions of the simulation. Within conditions, across repeated samples there was no noticeable correlation between the covariates' mean differences and the magnitude of bias of average treatment effect estimate for the covariates that were imbalanced before adjustment. Between conditions, small mean differences of covariates after propensity score adjustment were not sensitive enough to identify the optimal Random Forests model specification for propensity score analysis.
Date Created
2013
Contributors
- Cham, Hei Ning (Author)
- Tein, Jenn-Yun (Thesis advisor)
- Enders, Stephen G (Thesis advisor)
- Enders, Craig K. (Committee member)
- Mackinnon, David P (Committee member)
- Arizona State University (Publisher)
Topical Subject
Resource Type
Extent
vii, 96 p. : ill
Language
eng
Copyright Statement
In Copyright
Primary Member of
Peer-reviewed
No
Open Access
No
Handle
https://hdl.handle.net/2286/R.I.18132
Statement of Responsibility
by Hei Ning Cham
Description Source
Viewed on Sept. 25, 2014
Level of coding
full
Note
thesis
Partial requirement for: Ph. D., Arizona State University, 2013
bibliography
Includes bibliographical references (p. 77-81)
Field of study: Psychology
System Created
- 2013-07-12 06:29:57
System Modified
- 2021-08-30 01:39:08
- 3 years 2 months ago
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