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Design of experiments / Experiments / Statistics / Data collection / Knowledge / Randomization / Randomized experiment / Scientific control / Blind experiment / Randomized controlled trial / Analysis of variance
Date: 2015-03-12 17:04:30
Design of experiments
Experiments
Statistics
Data collection
Knowledge
Randomization
Randomized experiment
Scientific control
Blind experiment
Randomized controlled trial
Analysis of variance

NIH Rigor and Reproducibility Training Module 2: Blinding and Randomization

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