This project is to gauge the individual treatment effect in randomized controlled trials (RCT) using Meta-Learner, a machine learning framework. And then provide advice for next round intervention allocation based on the pattern we found in individual effects. You can read my full description in thesis.pdf.
Affiliation: Institute for Social and Economic Research and Policy, Columbia University.
Keywords: Randomized Controlled Trails (RCT), Meta-Leaner
Software:
- Python :
econml
,linearmodels
,statsmodels
sklearn
Reference
- Paper Introduction to Meta-Learner
- Computation about meta-learner: EconML
Data and Scope
Note: Data sets are not posted due to privacy and intellectual property concerns. Special thanks to Dr. Don Green grants me the access to the data files.
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Exploratory analysis on three text-messaging voter mobilization experiments conducted before 2016 general election.
Experiment Treatment Group Control Group Script One Arizona Campaign 200,442 50,187 code/One Arizona Experiment.ipynb
NextGen Climate Campaign 94,257 94,229 code/NextGen Climate Experiment.ipynb
Vote.org 905,396 301,920 code/Vote Org Experiment.ipynb
Pooled 1,019,697 446,336 code/Pooled Analysis.ipynb
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Estimate individual treatment by regression with interaction term
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Estimate individual treatment by meta-learner approach