Some key points to remember
- Distribution of scores or values can be displayed by using Box or Whiskers plots and histograms.
- Frequency and percentage can be computed for ordinal data. Eg: Strongly disagree to strongly agree.
- We can compute Frequency and percentage for interval and ratio level data as well. Eg: Age, temperature, Height, weight.
- Distribution of interval/ ratio data often forms a “bell shaped” curve.
- Measures of central tendency and measures of dispersion are computed with ratio/interval data.
Note:
a) Measure of central tendency:
- Mean, Median and Mode.
b) Measure of dispersion:
- Variance, Standard Deviation, Standard error of the mean.
- Describes how “ Spread out” a distribution score is.
- Increased variance, Scores are all over the place and don’t necessarily fall close to the mean.
Central limit theorem
- The larger the sample size, more normal the distribution of sample mean become. i.e. increased sample size α increased normal distribution.
- Helps to draw conclusion without having knowledge about the distribution of population.
- Sample size 30 or greater than 30 makes a normal distribution.
Probability
- Chance of getting selected or an event to occur.
- Occurs between 0 ( NO) to 1 ( Yes).
- Possibility of all possible events always sums to 1.
- More the number of sample means more normal the binomial distribution.