differences in z and t scores

  • in z scores - we know population standard deviation
  • in t statistics - we do not know

t statistic mean - null hypothesis divided by the standard error of the mean (Sₘ)

6 steps of hypothesis testing*

  • look yp the t stat that fall at each line marking the middle 95%

t statistic depends on the sample size

Uₘ - null hypothesis

t-statistic

  • Cohen's d = (M - μ) / s

confidence intervals (CI)

size and sample size matters when we think about power

sample size increases, so does the power

pre-post design

    • participants complete DV before (pre-) and after (post-) "treatment"

within-subject design

  • observe participants across multiple conditions
    • not necessarily before and after treatment
    • could be comparing multiple treatments

example: memory test after aerobic exercise and after anaerobic exercise

  • DV: memory test
  • comparing the same subjects in multiple situations

-

  • sD – estimated standard

deviation of the difference scores

  • MD - average difference score

in the sample

oct 28 2024 ∞
oct 30 2024 +