Simulation-assisted hypothesis testing research
Simulation-assisted hypothesis testing research replaces or supplements analytical probability theory with computational simulation — resampling, permutation, or Monte Carlo methods — to construct null distributions and evaluate hypotheses. Rather than assuming a parametric distribution and consulting a table, the researcher generates thousands of simulated datasets from the observed data or a specified model, building an empirical null distribution against which the observed test statistic is compared. The approach is especially valuable when analytic assumptions (normality, large samples) cannot be met.
Allikakirje
Tsiteeringud kopeeritud meetodi allikakirjest sõna-sõnalt. Nendest ei saa järeldada väidete tasemel kinnitust.
- Efron, B., & Tibshirani, R. J. (1993). An Introduction to the Bootstrap. Chapman and Hall/CRC. · ISBN 978-0412042317
- Good, P. I. (2005). Permutation, Parametric and Bootstrap Tests of Hypotheses (3rd ed.). Springer. · ISBN 978-0387988641
Kureeritud väited
Väited on salvestatud tõendite registrisse, igal oma hinnanguga.
See vaade ei loo väite hinnangut, kui registris seda pole.
Seotud meetodid
Genereeritud meetodigraafist ja kuvatud masina soovitatud seostena – väiteid ei järeldata.