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Research Methods
in Psychology
Statistics
Lesson 10:
Saturday, 20 April 13
Lesson 9
EXAM QUESTION
Taken from VCAA 2011 Mid Year Exam
Saturday, 20 April 13
Text
Saturday, 20 April 13
Lesson 10: Statistics
* Define descriptive statistics 
* Define inferential statistics 
* Describe the types of statistics in Psychology:
- calculate measures of central tendency including mean,
median and mode
-interpret p-values and draw conclusions
-evaluate research in terms of generalizing the findings to
the population
 
What you need to know and be able to do
Saturday, 20 April 13
Generalising Results
To be able to generalise results, the following criteria
must be met:
The results show statistical significance (p<0.05)
All sampling procedures were appropriate
All experimental procedures were appropriate
All measures were valid
All possible confounding variables were controlled.
Saturday, 20 April 13
Types of Statistics
In psychology there are two types of
statistics
1) Descriptive Statistics, show results
2) Inferential Statistics, explains results in
relation to hypotheses.
Saturday, 20 April 13
Descriptive statistics
Test A -1,7,22,66,4,3,55,44,5,6,78,789,23,1,23,
Test B -67,43,67,678,33,21,45,76,89,09,3,3,23,
Who would you describe this data?
Saturday, 20 April 13
Descriptive statistics
Descriptive statistics are used to summarise,
organise and describe data obtained from research
Test A -1,7,22,66,4,3,55,44,5,6,78,789,23,1,23,
Test B -67,43,67,678,33,21,45,76,89,09,3,3,23,
Who would you describe this data?
Saturday, 20 April 13
Descriptive Statistics
1) Percentages
2) Measures of central tendency
3) Spread of scores
4) Measures of Variability
5) Graphs and tables (Later in the AOS)
Saturday, 20 April 13
Calculating the
percentage
Number of times score occurs DIVIDED BY
Total number of scores in data set
MULTIPLIED BY 100
E.G. The percentage of rolling a 6 would be:
13/80 = 0.1625 x 100 = 16.25%
Saturday, 20 April 13
Tells us how the data are clustered near the central
point of the dataset.
There are three measures of central tendency
1) Mean - average of all the scores (calculated by
adding up all the scores and dividing that total by the
number of scores)
2) Median - the score that occurs exactly halfway
between the lowest and the highest score.
3) Mode - the most commonly occurring score in the
dataset.
2) Measures of Central Tendency
(Measures in the Bell Curve)
Saturday, 20 April 13
Saturday, 20 April 13
3) Spread of scores
Another way of describing data is by looking at
how the scores are spread. This is known as
variability. This can be done by
Range - The range of data can be calculated by
subtracting the lowest score from the highest
score
Standard deviation - How far is each individual
piece of data from the mean. A low standard
deviation indicates the scores cluster around the
mean
Saturday, 20 April 13
Complete Check your understanding questions on
page 23 (RM book) - 10 min
Saturday, 20 April 13
Inferential Statistics
Inferential Statistics are used once the descriptive
statistics have identified there is a difference
(variation) from the mean. (Read page 30 of RM book)
What next is to determine if this difference or
variance is significant, or is it just due to chance.
Inferential tests give a probability that the difference
is caused by chance.
This is expressed as a p value.
Generally the lower the p value the better, however
p<0.05 (that is 5 times in 100 or 5% of the time it is
due to chance) is widely accepted.
Saturday, 20 April 13
p = 0.03 means there are 3 chances in 100 (3%)
that this difference would be achieved by chance
alone.
If the level of significance is p<0.05 then these
results can be said to be statistically significant as it
is less then (<) 0.05
If the p value = 0.3 then the results are not
significant as 0.3 is greater then 0.05.
Saturday, 20 April 13
Complete questions on page 31 (RM book) 10 min
Saturday, 20 April 13

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Lesson 10 rm psych stats & graphs 2013

  • 2. Lesson 9 EXAM QUESTION Taken from VCAA 2011 Mid Year Exam Saturday, 20 April 13
  • 4. Lesson 10: Statistics * Define descriptive statistics  * Define inferential statistics  * Describe the types of statistics in Psychology: - calculate measures of central tendency including mean, median and mode -interpret p-values and draw conclusions -evaluate research in terms of generalizing the findings to the population   What you need to know and be able to do Saturday, 20 April 13
  • 5. Generalising Results To be able to generalise results, the following criteria must be met: The results show statistical significance (p<0.05) All sampling procedures were appropriate All experimental procedures were appropriate All measures were valid All possible confounding variables were controlled. Saturday, 20 April 13
  • 6. Types of Statistics In psychology there are two types of statistics 1) Descriptive Statistics, show results 2) Inferential Statistics, explains results in relation to hypotheses. Saturday, 20 April 13
  • 7. Descriptive statistics Test A -1,7,22,66,4,3,55,44,5,6,78,789,23,1,23, Test B -67,43,67,678,33,21,45,76,89,09,3,3,23, Who would you describe this data? Saturday, 20 April 13
  • 8. Descriptive statistics Descriptive statistics are used to summarise, organise and describe data obtained from research Test A -1,7,22,66,4,3,55,44,5,6,78,789,23,1,23, Test B -67,43,67,678,33,21,45,76,89,09,3,3,23, Who would you describe this data? Saturday, 20 April 13
  • 9. Descriptive Statistics 1) Percentages 2) Measures of central tendency 3) Spread of scores 4) Measures of Variability 5) Graphs and tables (Later in the AOS) Saturday, 20 April 13
  • 10. Calculating the percentage Number of times score occurs DIVIDED BY Total number of scores in data set MULTIPLIED BY 100 E.G. The percentage of rolling a 6 would be: 13/80 = 0.1625 x 100 = 16.25% Saturday, 20 April 13
  • 11. Tells us how the data are clustered near the central point of the dataset. There are three measures of central tendency 1) Mean - average of all the scores (calculated by adding up all the scores and dividing that total by the number of scores) 2) Median - the score that occurs exactly halfway between the lowest and the highest score. 3) Mode - the most commonly occurring score in the dataset. 2) Measures of Central Tendency (Measures in the Bell Curve) Saturday, 20 April 13
  • 13. 3) Spread of scores Another way of describing data is by looking at how the scores are spread. This is known as variability. This can be done by Range - The range of data can be calculated by subtracting the lowest score from the highest score Standard deviation - How far is each individual piece of data from the mean. A low standard deviation indicates the scores cluster around the mean Saturday, 20 April 13
  • 14. Complete Check your understanding questions on page 23 (RM book) - 10 min Saturday, 20 April 13
  • 15. Inferential Statistics Inferential Statistics are used once the descriptive statistics have identified there is a difference (variation) from the mean. (Read page 30 of RM book) What next is to determine if this difference or variance is significant, or is it just due to chance. Inferential tests give a probability that the difference is caused by chance. This is expressed as a p value. Generally the lower the p value the better, however p<0.05 (that is 5 times in 100 or 5% of the time it is due to chance) is widely accepted. Saturday, 20 April 13
  • 16. p = 0.03 means there are 3 chances in 100 (3%) that this difference would be achieved by chance alone. If the level of significance is p<0.05 then these results can be said to be statistically significant as it is less then (<) 0.05 If the p value = 0.3 then the results are not significant as 0.3 is greater then 0.05. Saturday, 20 April 13
  • 17. Complete questions on page 31 (RM book) 10 min Saturday, 20 April 13