correlations

Cards (11)

  • correlations:
    • illustrate the strength + direction of association between two or more covariables - represented on x and y axis
    • plotted on scattergrams
  • positive correlation:
    • as covariable increases, other increases
  • negative correlation:
    • as one covariable increases, other decreases
  • zero correlation:
    • increase in 1 variable is not associated with change in other variable
  • linear + curvilinear correlation:
    • positive + negative correlations are considered linear = straight line
    • curvilinear occurs when relationship is still predictable but curved e.g yerkes dodson law
  • correlation coefficient:
    • used to measure extent of correlation between covariables
  • correlation coefficient pt2:
    • maximum value of 1 - +1 = positive correlation, -1 = perfect negative correlation
    • +/- shows whether positive or negative
    • number tells us how closely covariables are related
  • tables of significance + correlation:
    • tells us how big the coefficient needs to be in order for correlation to be significant
  • strengths of correlations pt 1:
    • useful for investigating trends in data
    • if correlation is significance , further research = justified
    • often used as starting point to assess patterns before researchers commit to experimental data
  • strengths of correlations pt 2:
    • relatively quick + economical to conduct
    • no need for controlled environment, no manipulation of variables
    • secondary data can also be used
  • weakness of correlations:
    • cannot demonstrate cause + effect
    • dont know which covariables cause other to change
    • untested third variable (intervening variable) could be causing relationship
    • can be misused or misinterpreted - particularly in media