Title: Researching the Social World Part 1 Research Methods
1Researching the Social World(Part 1 Research
Methods)
- An Introduction plus some
- revision of basic terms
- and concepts
2Course Content
- Quantitative and Qualitative methods
- ANOVA and Multiple Regression
- Observations and Interviews
- Ethics
- Writing Up a Report
- Designing and carrying out your own research
3Introduction to Research Methods and Data
Analysis in Psychology
Darren Langdridge
Lecturer Laurence Hopkins Course Researching
the Social World
- Benefits of purchasing this book
- Accessible and jargon free
- Covers both qualitative and quantitative methods
and data analysis - this book will see you right
through your course! - Includes activities and study exercises to cement
knowledge and understanding
0130978329
Available from Blackwells, Liverpool University
4But dont forget or sell
- Dancey, C.P. Reidy, J. (2002) Statistics
Without Maths for Psychology 2nd Edition.
Harlow. Pearson Education Limited - You will be using this book in many of your
seminars - You might also find the following books useful if
you want a more detailed explanation. - Field, A. (2000), Discovering Statistics
using SPSS for Windows. London. Sage
Publications. - Smith , J. (2003) Qualitative Psychology A
Practical Guide to Research Methods. London. Sage
Publications.
5AssessmentOverall you have to get 40
- Class Test
- 2 hour test 4 questions
- Essay on quant/qual debate
- Definitions of terms
- Interpreting SPSS
- Reliability/validity question
- Coursework
- Choice of topic and method is yours (options in
handbook) - Carried out as a group
- Write up individually
- Hand in Thursday
- Dec 1st
6Heavy Reminder!
- Plagiarism will result in your work receiving a
mark of zero. If the plagiarism is major then you
will not be allowed to resubmit in August. Minor
cases will resubmit in August but can only get a
grade E overall.
- This year any work handed in late without an
extension will receive a mark of zero. There is
no 10 deduction in the first week of lateness
7Last year (2005/6) 29 failed
- 18 As, 19, Bs
- 30 got B or above in class test
- 56 got a grade C or above in class test
8Attendance Participation
- Non- attendance will be followed up i.e. letters,
phone calls, interviews. - See me if you need to change seminar group
- Act as if you are interested!!
- Participate in workshops it helps to pass the
time - Ask questions they are a really good way of
getting answers - Do not be afraid to look foolish!
9The Websitehttp//hopelive.hope.ac.uk/psychology/
LevelI/rsw/index.htm
- Please get in habit of checking every week
- New useful stuff going on all the time
- Often you will need to print off material for the
next seminar - There are SPSS data files there that you can use
to practice with.
10Idiots guide to Psychological Research
- Measure them e.g correlational research
- Watch them e.g. observational research
- Ask them e.g. interviews or questionnaires
- Mess about with them and see what happens e.g.
experimental research
11The Scientific Method
12Quantitative/qualitative debateClaimed Features
- Quantitative
- Hard, fixed, objective, value-free, hypothesis
testing, - numbers
- Controlled environments
- Reductionist
- Positivist
- Outcomes
- Concerned with causal explanations
- Replicable
- Qualitative
- Soft, flexible, subjective, political,
speculative, - symbols (words)
- Focus on natural settings
- Holistic
- Hermeneutic (concerned with meaning
- Process
- Concerned with induction and grounded theory
- Rich detailed data
13Revision
- 1 2 tailed hypotheses
- Independent dependent variables
- Between within subject/participant designs
- Types of data (continuous or categorical
nominal, ordinal interval) - Mean and Standard Deviation
- Significance levels
- Parametric non-parametric tests
- Correlations
- t-tests
14Hypotheses
- People who smoke cannabis will giggle (for no
apparent reason) more than a control group. - Men earn more money than women.
- The more you attend PRI seminars the higher your
mark will be in the exam.
15ANALYSIS OF VARIANCE
16Back to the t-test
- The t-test is a parametric test (what!) which
compares TWO conditions. It can be between or
within participants (i.e. independent or repeated
measures) - The t-test is not that different from ANOVA
17Parametric tests (e.g. t-tests, pearsons
correlation, ANOVA)
- Make estimates about the general population from
sample statistics. - Data should be interval, normally distributed and
there should be homogeneity (similarity) of
variance between conditions. - More powerful than non-parametric tests
(Wilcoxon, Mann-Whitney etc)
18Comparison of 2 Athletic Clubs at the 100 metres
19Comparison of the 2 clubs on a memory recall test
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22The variance caused by the independent variable
is much larger than the variance occurring due to
random unsystematic fluctuations.
23Here the variance caused by the independent
variable (i.e. variance between conditions) is
small compared to the variance that is occurring
by random unsystematic fluctuations.
24- So Analysis of Variance compares the variance
caused by independent variables (and their
interactions) with random unsystematic error. If
this ratio is large then the test will be
significant. - Generally, in error bar charts the degree of
overlap of the confidence limits will give some
idea as to whether the results are significant or
not.
25 STATISTICAL SIGNIFICANCE MEMORY TESTS (20
WORDS) Imagine we keep testing 2 groups taken
randomly from the whole population and we keep
repeating this. The null hypothesis (i.e. no
difference between the groups) is true. USUALLY A
14 B 14 (DIFFERENCE 0) A 14 B 13
(DIFFERENCE 1) A 12 B 14 (DIFFERENCE
-2) A 15 B 13 (DIFFERENCE 2) A 13 B 13
(DIFFERENCE 0) AND SO ON I.E. USUALLY THERE
WONT BE MUCH DIFFERENCE HOWEVER OCCASIONALLY
JUST BY CHANCE (REMEMBER THE NULL HYPOTHESIS IS
TRUE) A 17 B 11 (DIFFERENCE 6) A 10 B 17
(DIFFERENCE -7) THE CHANCES(PROBABILITY) OF
GETTING THESE RESULTS IF NULL HYPOTHESIS IS TRUE
IS VERY SMALL BUT IT DOES SOMETIMES HAPPEN. NOW
IMAGINE WE INVESTIGATE AGEING AND MEMORY AND NOW
GROUP X YOUNG AND GROUP Y OLD. WE HPYOTHESISE
THAT THE YOUNG WILL DO MUCH BETTER THAN THE OLD
AND WE GET THESE RESULTS X 16 Y 9
(DIFFERENCE 7) OUR STATISTICAL TEST WILL TELL
US THE PROBABILITY OF GETTING THESE RESULTS IF
THE NULL HYPOTHESIS IS TRUE AND IT WILL SAY THAT
p IS VERY SMALL (MAYBE lt 0.05 OR 5) THEREFORE WE
WOULD REJECT THE NULL HYPOTHESIS SINCE IT IS
UNLIKELY TO BE TRUE. IT IS MORE LIKELY THAT OUR
EXPERIMENTAL HYPOTHESIS IS TRUE I.E. THAT THERE
IS A DIFFERENCE BETWEEN OLD AND YOUNG MEMORY.
26ANOVA
- The t-test is used when there are just 2
conditions and when there is only 1 independent
variable. - Anova is used when there are 3 or more conditions
or when there is more than 1 independent
variable. - One Way Anova 1 IV Two Way Anova 2 IV
- Can have more than 2 IVs (but we wont be doing
these so dont worry about it for now!)
27One Way ANOVA
- One Independent variable
- 3 or more conditions (levels)
- Can be independent (unrelated or between
participants) or repeated measures (unrelated or
within participants)
28Viagra Study
- Field (2000) uses some fictitious data regarding
a between participant study with 3 conditions or
levels where the independent variable dose of
Viagra. - Placebo
- Low Dose Viagra
- High Dose Viagra
- Dependent Variable ??
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30Descriptive Statistics
31F Ratio
- In basic terms the F ratio is the variance caused
by the treatment (independent variable or effect)
divided by the residual, unsystematic, sampling
error. - The variance is worked out by summing the squared
deviation of scores from the mean (Sum of
Squares) - As a general rule for samples above 10 an F ratio
of above 5 will probably be significant but SPSS
will tell you!
32Anova Summary Table(In this case an unrelated
ANOVA)
33Levenes Test(for homogeneity of variance)
- This is a test that you dont want to be
significant i.e. you want the sig (or p) to be
more than 0.05 - If it is significant then the validity of the
results would have to be questioned there are
ways of correcting for it but beyond scope of
this course
34Post-hoc tests (e.g. Tukeys Honestly Significant
Difference or HSD) (Only relevant if you have 3
or more levels of the IV.)(SPSS cannot do post
hoc tests on within-participant data)
35Family Wise Error Rate
- Whenever we do a statistical test using the
(plt0.05) level of significance there is a 5
chance of making a Type 1 Error or a 95 chance
that we wont make a Type 1 Error. - It can be shown that as we perform more and more
tests on the same set of data then the chance of
making a Type 1 error goes up from 5 according
to how many tests are performed. - The likelihood of making a Type 1 Error is known
as the Family Wise Error Rate and can be
calculated to be equal to 1 (0.95)n where n
is the number of tests. - Post hoc tests use more conservative (strict)
calculations to make sure that there is no more
probability of making a Type 1 error than in a
single test.
36Planned (a priori) Comparisons
- If you decide before the data is analysed that
you want to compare certain conditions then it is
better than using post hoc tests since there will
be less tests performed and if a difference
exists you are more likely to find it this way.
37Repeated MeasuresOne Way ANOVA
- Because the participants in each condition are
the same people this reduces some of the
unsystematic variation that exists in between
participants designs. - This makes these tests more sensitive and
powerful. - However as well as the homogeneity of variance
assumption we have the criteria of SPHERICITY
that has to be met.
38Sphericity (only relevant if you have 3 or more
levels of the within-participant independent
variable)
- The variance of the difference between pairs of
scores are equal for all groups (i.e. A-B A-C
B-C) Read Field p324 for more details. - It is tested for by Mauchlys test which (like
Levenes) you dont want to be significant. - However if it is significant then there is a
correction called the Greenhouse-Geisser and it
is this row in the output that you should use.
39Within-participants ANOVA
40Output for Within-Participants ANOVA
41Two Way Anovas
- In real life there is more than one variable
affecting our dependent variables - Anova can handle experimental designs where there
is more than one IV (multifactorial designs) - These Anovas can be independent, repeated
measures (rare) or a mixture of the 2. - ANOVA can tell us whether the IVs are producing
a main effect but also whether or not the 2 IVs
are interacting with each other.
42Two Way Anova
- Imagine that we are investigating the effect of 2
IVs on 1 DV - e.g. the effect of alcohol and also eating a
kebab on the DV on vomiting at end of night - Or the effect of gender and also the amount of
violence in a film on the DV of how much the film
was liked
43An interaction between kebabs and alcohol
44Anova Summary Table
45An interaction between gender and violent content
of films
46Anova summary table
47The effect of the media on body image for males
and females
- Females and males were shown either photos of
attractive same sex models or photos of
landscapes. - They were then asked to rate how they felt about
their own body.
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49No interaction
- Here we can see that the males have scored higher
than the females. - The landscape condition has generally scored
higher than the model condition - With the lines being so parallel it is doubtful
that there is an interaction, - However to see if any of the main effects or the
interaction are significant we have to check with
the Anova table in SPSS.
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51Mixed Anova
- In this type of Anova one of the IVs is between
participants and the other is a
within-participant variable. - For example you could investigate the effects of
alcohol on driving but want to know if gender was
also an important factor. - In this case gender would be a between-participant
IV (Obviously!) but alcohol could be a
within-participant variable (in this case with 3
levels sober, a bit drunk and completely psed) - This would be a 2 x 3 mixed design.
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