Journal article
A Closer Look at Testing the "No-Treatment-Effect" Hypothesis in a Comparative Experiment
Statistical science, Vol.30(3), pp.352-371
09/10/2015
DOI: 10.1214/15-STS513
Abstract
Statistical Science 2015, Vol. 30, No. 3, 352-371 Standard tests of the "no-treatment-effect" hypothesis for a comparative experiment include permutation tests, the Wilcoxon rank sum test, two-sample $t$ tests, and Fisher-type randomization tests. Practitioners are aware that these procedures test different no-effect hypotheses and are based on different modeling assumptions. However, this awareness is not always, or even usually, accompanied by a clear understanding or appreciation of these differences. Borrowing from the rich literatures on causality and finite-population sampling theory, this paper develops a modeling framework that affords answers to several important questions, including: exactly what hypothesis is being tested, what model assumptions are being made, and are there other, perhaps better, approaches to testing a no-effect hypothesis? The framework lends itself to clear descriptions of three main inference approaches: process-based, randomization-based, and selection-based. It also promotes careful consideration of model assumptions and targets of inference, and highlights the importance of randomization. Along the way, Fisher-type randomization tests are compared to permutation tests and a less well-known Neyman-type randomization test. A simulation study compares the operating characteristics of the Neyman-type randomization test to those of the other more familiar tests.
Details
- Title: Subtitle
- A Closer Look at Testing the "No-Treatment-Effect" Hypothesis in a Comparative Experiment
- Creators
- Joseph B Lang
- Resource Type
- Journal article
- Publication Details
- Statistical science, Vol.30(3), pp.352-371
- DOI
- 10.1214/15-STS513
- ISSN
- 0883-4237
- eISSN
- 2168-8745
- Language
- English
- Date published
- 09/10/2015
- Academic Unit
- Statistics and Actuarial Science; Biostatistics
- Record Identifier
- 9983986089202771
Metrics
28 Record Views