Inferential statistics

Cards (27)

  • Nominal level of data is the least info and category data
  • Ordinal level of data is data that can be ordered in some way without knowing exact differences (likert scales)
  • Interval level of data is the most information and it uses exact measurements with differences like psychological measure of stress
  • Alternate hypothesis are written predicting that the result will be significant
  • Null hypothesis predicts the results to not be significant (due to chance)
  • The main inferential statistical tests are
    • Chi - squared
    • Wilcoxon signed ranks
    • Mann - whitney U
    • Spearman's rho correlation coefficient
  • They choose a significance level when they begin their research to express the level of chance they are prepared to accept to be sufficiently satisfied
  • The traditional level of significance is 5% p<0.05 which means that the results occurring due to chance is less than or equal to 5%
  • IF the probability is higher than that then the null hypothesis will be accepted
  • Every inferential statistical test has its own procedure to calculate the observed value (or calculated value) with a table of critical values
  • Observed value is when statistical tests turn all of the known results into one value
  • The critical value is precalculated
  • If the observed value is bigger than the critical value is bigger the results are not significant
  • p<0.05/the5% level is the results having occurred by chance is less than 5% its the most traditional and most frequently used and it offers balance between the likelihood of making type 1 and 2 errors
  • p<0.1/10% is the results occurring due to chance is less than 10% this used when a researcher does not need a strict level of significance like new research 90% significant
  • p<0.01 The probability of the results occurring by chance is less than 1% its very strict as any mistakes in the research could have serious consequences 99% significance rate its normally used will human health.
  • Type 1 error is reject the null hypothesis when the results are actually due to chance (false positive)
  • Type 2 is fail to reject the null hypothesis when the results were not due to chance (false negative)
  • Type 2 error is more common in 1% level
  • Type 1 error is more typical in the 10% level
  • What are you testing for like difference or correlation e.g experiment or correlational study
  • What level of data do you have like nominal or ordinal and above
  • Is it related or unrelated sampling e.g repeated measures and matched groups are related and independent groups are unrelated
  • Chi- squared
    • Difference
    • Nominal
    • Unrelated
  • Spearman's RHO
    • Correlation
    • Ordinal
    • Related
  • Wilcoxon Signed ranks
    • Difference
    • Ordinal
    • Related
  • Mann-whitney u
    • Difference
    • Ordinal
    • Unrelated