presentation of quantitative data

    Cards (18)

    • tables:
      • in results section of report, raw scores will be converted into descriptive statistics
      • should include title, followed by summary paragraph explaining conclusions drawn
    • pie chart:
      • used for discrete data
    • bar charts:
      • data can be divided into categories e.g discrete
      • categories on x axis, frequency on y
      • bars separated to show separate categories
    • histograms:
      • data is continuous e.g scores, weight
      • x-axis = equal sized intervals of single category
      • y-axis = represents frequency within each interval
    • scattergrams:
      • associations between covariables rather than differences
      • either covariable occupies x/y axis
      • each point on graph corresponds to x/y position of covariables
    • line graph:
      • represents continuous data
      • uses points connected by lines to show how something changes over time
      • IV on x axis, DV on y axis
    • distributions:
      • no skewness = symmetrical
      • positive skew = left modal
      • negative skew = right modal
    • normal distributions:
      • symmetrical
      • most people located in middle, few at extreme ends - 68% of data values are within 1SD of mean
      • mean, median, mode all occupy same midpoint of curve
      • tails of curve never reach xaxis
    • skewed distributions:
      • positive - most distribution concentrated towards left (mean = highest)
      • negative - most distribution concentrated towards right (mode = highest)
    • sign test:
      • -for no improvements, + for improvements
      • remove values that stay the same
      • smallest category = sign
    • probability + significance:
      • alternate (h1) - directional/non directional, null (h0)
      • stat test allows us to identify whether hypothesis is correct + whether we accept/reject null hypothesis
      • significant = accept alternate, reject null
      • not significant = reject alternate, accept null
    • probability:
      • stat tests work on basis of probability not certainty
    • significance level:
      • point where researcher claim to discover a large enough difference with correlation to claim effect has been found
    • significance level pt2:
      • researcher can be 95%+ certain that findings are actual differences/correlations not chance - still up to 5% chance, findings arent true
      • if result is significant at 5% level - h0 is rejected, h1 accepted
    • changes in significance levels:
      • more stringent levels e.g 0.01 - used with studies with human cost e.g drug trials
      • if study is significant at 0.05, researcher will check stringent levels - lower p value = more statistically significant
    • type 1 + 2 errors:
      • occur when inappropriate level of significance is used
    • type 1 error:
      • too lenient e.g 10% - results in rejecting null hypothesis which is true (false positive)
    • type 2 error:
      • too stringent e.g1% - results in accepting null hypothesis which is false (false negative)
    See similar decks