Abstract
Winsorizing and trimming are used to minimize the effects of outliers on estimated treatment effects. In Randomized Controlled Trials (RCTs), the typical approach winsorizes/trims the tails of the whole sample, pooling together treatment and control groups. This can have as a consequence that observations from treatment and control groups are disproportionately winsorized/trimmed. An alternative approach, Stratified Winsorizing/Trimming, winsorizes treatment groups separately, ensuring that an equal proportion of observations are winsorized/trimmed per experimental arm. A formal framework and Monte Carlo simulations of an RCT illustrate that Stratified Winsorizing/Trimming reduces the treatment effect bias and risk of Type II errors compared to the traditional approach, although at the cost of a greater likelihood of Type I errors. Applications to Angelucci et al. (2023) and Jack et al. (2023) illustrate that the chosen winsorizing/trimming technique can affect the magnitude and statistical significance of treatment effects. Practical guidelines for researchers conducting RCTs that want to winsorize/trim outliers are discussed.
| Original language | English |
|---|---|
| Article number | 103815 |
| Number of pages | 13 |
| Journal | Journal of Development Economics |
| Volume | 182 |
| Early online date | May 2026 |
| DOIs | |
| Publication status | Published - Jun 2026 |
Keywords
- Winsorizing
- trimming
- biased treatment effect
- type I errors
- type II errors
- RCT
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Replication package for "Winsorizing and Trimming in RCTs"
Wicker, T. (Creator), Mendeley Data, 18 May 2026
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