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Evaluation methods / Design of experiments / Observational study / Philosophy of science / Validity / Impact evaluation / Design of quasi-experiments / Internal validity / Confounding / Science / Statistics / Evaluation
Date: 2012-04-27 07:12:45
Evaluation methods
Design of experiments
Observational study
Philosophy of science
Validity
Impact evaluation
Design of quasi-experiments
Internal validity
Confounding
Science
Statistics
Evaluation

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