quartz/content/notes/analyzing-experiments.md
Jet Hughes 8a667e5693 update
2022-05-27 14:12:53 +12:00

1.4 KiB

title aliases tags sr-due sr-interval sr-ease
analyzing-experiments
info203
lecture
scott-video
2022-06-01 7 250

3 questions

  • what does my data look like
    • graphs, plots, differnent summary plots
  • what are the overall numbers
    • aggregate stats e.g., mean average std dev
  • are the differences "real"?
    • significance p-value
    • likihood that results are due to chance

p value

pearsons chi-squared test. comparing rate of expected value vs observed value


\chi^{2}=\frac{(observed-expected)^2}{expected}

"normal" outcome variance follow normal/gaussian distribution.

as chi squared gets bigger it is less likey that the coin is unbiased

e.g., 20 tosses, we got 13 heads. at p<0.05 can we reject the null that the coin is unbiased

value = 1.8

degrees of freedom num possibilites n-1 = 2-1 = 1

we cannot reject the null

example 2 chi2 5.4 reject the null

click through rate example\

formalieses: "were pretty sure". helps generalize from small samples

for normal continiuous data

  • t-tests (compare 2)
  • annova (compare more than 2)

data is not always normal.

  • bi modal - 2 peaks
  • skewed
    • e.g., time: can be infiniely slow, but not infinitely fast

non-normal data

  • knowing is half tha battle
  • run A/A tests
  • use randomised testing