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Happy new year Welcome back.

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Presentation on theme: "Happy new year Welcome back."— Presentation transcript:

1 Happy new year Welcome back

2 To let you know… Every 2 weeks: mini mock exam (Every other Monday)
Revision session held Tuesday/Wednesday timetable will be given to you in the coming weeks. Update on the website: exam practice section. (target: to complete exam questions) Research methods mini handbook and workbook

3 Plan for the coming weeks
3rd January: Levels of measurement Thursday 5th: Mock feedback Monday 9th: RM - picking the right test Tuesday 10th: RM – practice with questions. Friday 12th: RM 3rd week: Schizophrenia

4 Today Hand out homework (5th due in 16th) Still need to complete independent study. New homework cards What we are going on to Check homework (features of science)

5 A2: what you have covered so far
Reliability across all methods of investigation. Ways of assessing reliability: test-retest and interobserver; improving reliability. Types of validity across all methods of investigation: face validity, concurrent validity, ecological validity and temporal validity. Assessment of validity. Improving validity. Content analysis Features of science: objectivity and the empirical method; replicability and falsifiability; theory construction and hypothesis testing; paradigms and paradigm shifts. Reporting psychological investigations. Sections of a scientific report: abstract, introduction, method, results, discussion and referencing. Probability and significance: use of statistical tables and critical values in interpretation of significance; Type I and Type II errors.

6 A2: what you still have to cover
Inferential testing Introduction to statistical testing; the sign test. Factors affecting the choice of statistical test, including level of measurement and experimental design. When to use the following tests: Spearman’s rho, Pearson’s r, Wilcoxon, Mann-Whitney, related t-test, unrelated t-test and Chi-Squared test.

7 Today Introduction to inferential statistics Null hypothesis Level of significance Probability Type 1 and type 2 errors Carrying out statistical tests Picking the right test Writing up the report

8 RECAP: Quiz Outline the difference between descriptive statistics and inferential statistics? The null hypothesis predicts that there will be a significant difference? True/false. Shorthand for the null hypothesis is Ho? True/false What are Inferential statistics? Why is it necessary to have a Null hypothesis?

9 6. If the null hypothesis is retained, this means that the result is…
6. If the null hypothesis is retained, this means that the result is….. 7. What is the chosen p value also known as? 8. When does a type one error occur? 9. When does a type 2 error occur? 10. Which p value would you use if you were conducting a piece of research that is socially sensitive?

10 1. Outline the difference between descriptive statistics and inferential statistics?
Summarising data vs. allowing you to see whether the research hypothesis or null hypothesis is retained 2. The null hypothesis predicts that there will be a significant difference? True/false. False 3. Shorthand for the null hypothesis is Ho? True/false True 4. What are Inferential statistics? Tests designed to assess whether we reject or retain the null hypothesis. 5.Why is it necessary to have a Null? Eliminates bias. Forces researcher to accept the view that the two sets of data has occurred through chance. Means there is no other conclusions that can be made

11 6. If the null hypothesis is retained, this means that the result is not significant.
7. What is the chosen p value also known as? Level of significance 8. When does a type one error occur? reject the null hypothesis and accept the hypothesis 9. When does a type 2 error occur? retain the null hypothesis even thought the hypothesis is correct 10. Which p value would you use if you were conducting a piece of research that is socially sensitive? 1% (P=0.01) – there is a 1% chance that we wrongly reject the null hypothesis.

12 Levels of measurement Type of data

13 Why do I need to know about the levels of measurement?
most appropriate descriptive statistic to calculate which graph to use which inferential test to use Levels of measurement relate to quantitative data.

14 Measuring levels of measurement
Activity Nominal: 2 groups: tall on left/short on right Tall table: short table What is problem? Issues? Form a line in the class: tallest to shortest Rank: name (table) Better – what are the problems? Lets take your actual height (shoe size) – pot a correlation Equal difference

15 Levels of measurement Nominal (category) data This is the most simplest method of classifying information. Involves counting frequency data We must only be able to place each item/person into one category Only classifies each person as ‘tall’ or ‘short’; no distinction at all between ‘tall’ people.

16 Levels of measurement Ordinal data: This level of measurement involves ranking data into place order, with rating scales often being used to achieve this. These intervals cannot be considered equal They do not tell us about distances between positions We convert raw scores to ranks for statistical testing (1st ,2nd,3rd) and it is the ranks and not the scores that are used in the calculations.

17 Levels of measurement Interval data: Standardised measurements units like time, weight and temperature are interval data Most informative and accurate form of measurement Increments on the scale can be measured, and they are equidistant. Tell us how many intervals on the scale each person is from anyone else.

18 Activity Colour code, which statements below refer to each level of measurement Which level of measurement: Identify whether the data in each statement is nominal, ordinal or interval. Complete activity C and D. Levels of measurement in dogs

19 Activity How confident do you feel about the levels of measurement? Put your hand in the air showing… 5 fingers if you feel really confident 3 fingers if you feel okay about the topic 0 fingers if you do not feel confident .

20 Choosing the right test

21 Statistical tests The seven tests that you can be asked about (but won’t have to calculate) in the exam: Chi-squared (χ2) Wilcoxon T Mann-Whitney U Spearman’s Rho Unrelated t-test Related t-test Pearson’s r How do you know which test to use? You need to learn the following criteria, but there is no need for you to understand why this is the case

22 Criteria Difference or correlation?-Whether the researcher is testing for differences between groups (i.e. an experiment) or a correlation between two co-variables Level of measurement (nominal, ordinal, interval and ratio) In a test of difference, whether the experimental design is an independent groups, repeated measures or matched pairs

23 A A test of difference or a correlation?
Laboratory experiments, field experiments, natural and quasi experiments are all testing for differences between groups. The researcher is trying to establish the probability that changes in the DV are caused by the experimental manipulation or naturally occurring IV. Correlational research is attempting to show how two co-variables are linked. In this context correlation can include correlational analysis as well as investigations that are looking for an association. So look for the word correlation or association in the hypothesis for a correlation.

24 B Level of Measurement (type of data)- is the data nominal, ordinal or interval/ratio?

25 C The Experimental Design
An independent groups design uses different participants in each group, whereas the repeated measures design uses the same participants in each group. For mathematical reasons, these tests treat the repeated measures and match-pairs design as the same category.


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