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RESEARCH METHODS

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Title: RESEARCH METHODS


1
RESEARCH METHODS
  • This topic is examined as part of unit 1 and the
    exam questions are linked to the topics of Memory
    and Early Social Development

2
Research Aims
  • It is important when doing research to be clear
    about what you are trying to find out. This is
    known as the Aim of the research.
  • The Aim should be written as a clear expression
    of what you are trying to find out.
  • For example, you might write something along
    these lines-
  • The researcher wanted to find out/ to see if /
    to see whether/ to investigate . . .

3
Example-
  • A teacher thinks that the children in her class
    who eat breakfast concentrate better than those
    who dont.
  • She carries out an investigation to investigate
    this.
  • What would you write as the AIM of the study?
  • Have a go

4
You may have written something like-
  • The researcher wanted to find out whether eating
    breakfast affects the level of concentration in
    children.
  • OR
  • The researcher wanted to investigate the effect
    of eating or not eating breakfast on the
    concentration levels of children.

5
  • Think about Sperlings study.
  • What was his aim?

6
Hypotheses
  • A hypothesis is similar to but more specific than
    a research aim.
  • It is a precise statement about the expected
    outcome which is to be investigated in a
    psychological study.
  • Hypotheses are generated from the findings of
    previous research or from observations made in
    every day life.

7
  • A hypothesis is expressed in the form of a
    statement that can be tested when the test is
    done we can decide whether it is true or not.
  • It must be expressed in a clear way, in terms of
    things that can be measured. This is known as
    being OPERATIONALLY DEFINED.

8
  • Think about this hypothesis-
  • People who are deprived are less intelligent
    than people who are not deprived
  • Why is it not operationally defined?
  • What do we have to think about in order to
    operationally define it?
  • How can we make it operationally defined?

9
  • Examples might be-
  • There will be a positive relationship
    (correlation) between peoples IQ scores and
    their household income.
  • There will be a difference in the number of A-C
    GCSE passes of children whose parents have manual
    occupations and children whose parents have
    professional occupations.

10
Types of hypotheses
  • The NULL HYPOTHESIS The symbol used is Ho
  • This is used so that the researcher can show her
    prediction to be wrong it states that the
    findings of the investigation are not the result
    of the predicted effect but in fact are due to
    chance.
  • It is in effect, the conclusion we come to if the
    prediction is not found to be true.
  • It is needed as a starting point for statistical
    analysis of the data collected during a study,
    but for AS level you will not be required to
    carry out any statistical significance tests.

11
  • The null hypothesis states that either
  • There is no significant relationship between the
    two variables being studied, any relationship
    found is the result of chance.
  • or
  • That one variable has no significant effect the
    other, any effect found is the result of chance.

12
Examples-
  • There will be no significant relationship
    (correlation) between peoples IQ scores and
    their household income, any relationship found is
    due to chance.
  • There will be no significant difference in the
    number of A-C GCSE passes of children whose
    parents have manual occupations and children
    whose parents have professional occupations, any
    difference found isdue to chance.
  • You have a go at writing one for A level grades
    and hours spent revising.

13
  • The ALTERNATIVE HYPOTHESIS
  • this is the prediction you make and are testing
    in your investigation.
  • Sometimes called the experimental hypothesis or
    research hypothesis.
  • The symbol used is H1

14
  • The alternative hypothesis states that either
  • There is a relationship between the two variables
    being studied
  • or
  • That one variable has an effect the other
  • The examples given earlier about intelligence
    and social deprivation are examples of alternate
    hypotheses. Here is a reminder-

15
  • There will be a positive relationship
    (correlation) between peoples IQ scores and
    their household income.
  • There will be a difference in the number of A-C
    GCSE passes of children whose parents have manual
    occupations and children whose parents have
    professional occupations.

16
There are two different types of alternative
hypotheses-
  • Directional (one-tailed)
  • This states that one variable will affect the
    other in a specified way
  • or that the relationship between the two
    variables is a particular type of relationship.
  • Here are some examples-

17
  • Eating 3 pieces of fruit a day will reduce the
    risk of cancer.
  • Putting a list of words into categories will
    increase the number of words recalled in a recall
    test.
  • IQ scores are positively correlated (related) to
    head circumference

18
  • Non-directional (two-tailed)
  • This states that one variable will affect the
    other but does not specify in what way
  • or that there is a relationship between the two
    variables but does not say what type of
    relationship.
  • For example-

19
  • Eating 3 pieces of fruit a day will affect the
    risk of cancer.
  • IQ scores are correlated (related to) with head
    circumference
  • N.B. Remembering the difference between
    directional and non-directional hypotheses can be
    difficult imagine the hypothefish

The one tailed fish swims in one direction only
whereas the two tailed fish can go either way.
20
Ways of testing the alternative hypothesis
  • Experimental methods
  • True quasi experiments
  • Laboratory, field natural experiments.
  • Non-experimental methods
  • Observation studies
  • Case studies
  • Content analysis
  • Surveys
  • Interviews
  • Questionnaires

21
Experimental Methods
  • Experiments are probably the most often used
    method of research.
  • In the experimental method the researcher is
    specifically looking at the possible effect on
    one variable (the Dependent Variable DV) which
    might be caused by changing an other variable
    (the Independent Variable IV)
  • Hence an experiment is an investigation in which
    the IV is manipulated (altered/changed) in order
    to cause a change in the DV.
  • Only the experimental method can draw conclusions
    about cause and effect.

22
Non-experimental methods
  • Research methods in which the the independent
    variable is not manipulate in order to see its
    effect on the dependent variable.
  • These methods can not draw conclusions about
    cause and effect but can provide us with a lot
    of information about behaviour. The information
    can be used to support a theory and provide ideas
    for experimental testing.
  • There are some situations where an experiment
    would not be possible, and non experimental
    methods are the only option for gathering data.

23
Lets look at Variables a little more
closelyMatch the correct term to the description
  • The variable that is manipulated (or changed) to
    see if it has an effect on another variable.
  • The variable that is not manipulated, but is
    simply recorded to see if it has been affected by
    the manipulated variable.
  • Dependent Variable
  • Independent Variable

24
  • Like a hypothesis, the IV DV should be written
    in a very clear way.
  • They should be written in terms of how they will
    be measured, so that someone knows exactly what
    you are counting, timing etc.
  • As with hypotheses this is known as OPERATIONALLY
    DEFINING the variables.

25
Extraneous Variables
  • a general term referring to any variable other
    than the IV that might have an effect on the
    measured DV. An extraneous variable may or may
    not have been allowed for and/or controlled.
  • If the extraneous variables have not been
    controlled the unwanted effects they have (on the
    DV) are often known as errors.
  • E.g. the distraction of unwanted noise in a room
    where a memory test is taking place.

Have a go at the worksheets on Hypotheses,
Independent variables Dependent variables
26
The Case Study Method
  • A case study is an in depth study of one
    individual or of a small group of individuals or
    of an organisation. Usually the participant(s)
    has a defining feature that is of interest to the
    psychologist.
  • A case study can provide insight into the
    behaviour of the individual(s).
  • When carrying out a case study consent must
    always be gained from the participant before any
    data is gathered.

27
  • A case study involves gathering data about
    and/or from the participant. This can be done in
    several ways by using, interviews,
    questionnaires, tests and observations on both
    the participant and friends or relatives of the
    participant.
  • It may also involve looking at various written
    records on the participant e.g. medical records.
  • Case studies have strengths and weaknesses just
    like any other method of research.

28
In your Research Methods Workbook fill in the
section on Case Studies use page 121 in the
textbook and the handout with the Memory Case
studies on.
29
Analysing Data from Research
  • Psychologists gather qualitative and
    quantitative data.
  •  
  • QUALITATIVE data focuses on thoughts
    feelings about experiences expresses in words.
  •  
  • QUANTITIATIVE data focuses on how much there
    is of something expressed in numbers.
  •  

30
  • Analysing Quantitative Data
  • Raw Data. This is the list of numbers you gather
    when you measure your dependent variable. It
    usually contains the individual data from each
    participant. Generally trends and differences are
    not easily identifiable from this list. You need
    to summarise the raw data to be able to do this.
    Descriptive Statistics allow you to summarise
    what you have found.

31
  • Levels of Measurement
  • In order to decide on the appropriate descriptive
    statistics to use on your data you must identify
    the level of measurement of the dependent
    variable.
  • There are three levels of measurement that you
    need to be aware of.
  • Each level gives more information about the
    dependent variable than the previous level
  • Nominal
  • Ordinal
  • Interval/Ratio

32
  • Nominal frequency counts into named categories
    e.g Tall or Short, Large or Small, Read
    more than one book in last 6 weeks or not read
    more than 1 book in last 6 weeks

Raw Data - More than 1 4, Not more than 1 1
33
  • Ordinal - values on this scale represent
    rankings, ratings or placing e.g put people in
    order of their heights from shortest to tallest,
    put people in order of how many books theyve
    read in past 6 weeks

34
  • Interval/Ratio these scales are more
    sophisticated and measure quantities or numbers
    of fixed units with equal distances between all
    points on the scale e.g. the actual heights
    in cm of each person. The number of hours spent
    reading.

35
  • Data can also be classified as discrete or
    continuous.
  • Discrete data a scale where there are only
    separated values of the variable being measured.
  • E.g. number of children in KES whole children
    can only exist
  • Continuous data a scale on which it is always
    (theoretically) possible to subdivide units of
    measurement
  • E.g. length of boundary fence round KSE
    theoretically it would be possible to measure to
    the nearest thousandth of a cm.

36
Descriptive Statistics
  • Measures of central Tendency
  • Used as a summary of the sample of data using one
    typical score.
  • Mean
  • Median
  • Mode

37
  • Mean
  • Arithmetical average.
  • Its sensitivity is both its strength and its
    weakness it can be distorted by extreme scores.
  • Best used on interval/ratio data, when
    distribution is normal.
  • Best not used when there are extreme scores, or
    when the distribution is skewed.
  • How to calculate the mean . . . .
  • Add up all of the scores and divide by the total
    number of scores.

38
  • Median
  • The central value when scores have been placed in
    order of size.
  • Its advantage is that it is not affected by
    extreme scores but it is affected by small
    changes in the number of scores, therefore is not
    useful when only a very small no. of scores are
    available.
  • Best used on ordinal data or when distribution is
    skewed.
  • How to calculate the median . . . .

39
  • Put all scores in ascending order.
  • If there are an odd no. of scores then the median
    is the middle score.
  • If there are an even no. of scores then take the
    middle two scores add them together and divide
    them by 2 to get the median score.

40
  • Mode
  • The most frequently occurring score.
  • It is immune to extremes, good for relatively
    large amounts of homogenous (similar) data.
  • Best used on nominal data.
  • Good when data is bi-modal (two modes).
  • Not useful when there are several different
    modes.
  • How to calculate the mode . . .
  • Find the most common score in the set of scores.

41
Experiments
  • True experiments
  • The IV is manipulated by the researcher
  • Participants are randomly allocated to (groups
    or) the conditions of the experiments
  • Quasi experiments
  • When the above are not met the experiment is
    known as a quasi experiment, example would be
  • Comparing groups of people where the groups
    already exist e.g. males females

42
Laboratory experiments.
  • Laboratory carried out in carefully controlled
    environments. e.g. participants are taken to a
    small classroom set up with the equipment and
    noise level kept constant in a study of memory
    recall.

43
Advantages Disadvantages of Lab.
ExperimentsIn pairs you have 5minutes to
think of as many advantages and disadvantages as
you can using a lab. experiment

44
(No Transcript)
45
  • In your Research Methods workbook fill in the
    section on Laboratory Experiments

46
Doing a Laboratory Experiment
  • State the alternative hypothesis to be tested.
  • Identify operationally define the IV and the
    DV.
  • Choose the most suitable Type of Experimental
    Design.
  • Identify and implement any controls associated
    with your chosen design
  • Identify the Extraneous variables that might
    affect the DV if they are not kept under control.
  • Decide how to control the extraneous variables
    do this by using Standardised Procedures
    Standardised Instructions.

47
Experimental Designs
  • The design of an experiment must be decided on,
    the choice will depend on
  • The nature of the topic of the experiment
  • The availability of resources (time,
    participants, materials, cost etc)
  • There are three designs to choose from and you
    need to weigh up the pros and cons of each when
    making your decision.

48
The Three Experimental Designs are
49
Have a go at the Review worksheet on Hypotheses,
Variables Designs
50
Advantages and Disadvantages of the designs.
  • Work in groups
  • You have 10 minutes to think of as many
    advantages and disadvantages as you can for each
    design.

51
Repeated Measures design (RM)
  • Disadvantages
  • Order effects can be a problem
  • It may be necessary to use different stimulus
    material
  • A time lag between conditions may be necessary
  • Demand Characteristics are more likely
  • Advantages
  • Participant variables are less of a problem
  • Fewer participants are needed

52
Independent Groups design.(IG)
  • Advantages
  • No order effects
  • Same stimulus material can be used for each group
  • No time lag needed between conditions
  • Demand Characteristics are less likely
  • Disadvantages
  • Greater problem with participant variables
  • Need more participants

53
Matched Pairs design. (MP)
  • Advantages
  • No order effects
  • No time lag is needed
  • The same stimulus material can be used in each
    condition
  • Demand Characteristics are less likely
  • Disadvantages
  • It is difficult to find well matched pairs
  • How do we know which characteristics are
    important to match?
  • The matching process is time consuming.

54
Controlling Extraneous Variables and dealing with
the problems of the various designs.
  • What can you do about Extraneous Variables in
    general?
  • Use standardised procedures (all ps do the
    experiment in the same way)
  • Use standardised instructions (all ps are given
    the same instructions)
  • Keep the environment the same for all ps

55
  • What can you do about Participant Variables (a
    problem with IG design)?
  • Random allocation to the different conditions of
    the experiment. This should equally distribute
    the differences between people across the
    conditions of the experiment.
  • Use the Repeated Measures design instead of the
    independent groups design.

56
  • What can you do about Order Effects (fatigue and
    boredom or practice can be a problem in the RM
    design)? There are two options-
  • Counterbalancing this involves both conditions
    being experienced as both a first and a second
    task.
  • E.g. Task A press buzzer in response to a light.
    Task B press buzzer in response to the sound of
    a bell.
  • To counterbalance half of the ps do Task A
    followed by task B and the other half do Task B
    followed by Task A. (the ABBA design).

57
  • Randomisation - this involves the different
    conditions of the experiment being presented in a
    random order to the participants.
  • E.G. In the above example two pieces of paper one
    with A and one with B written on could be placed
    into a hat. Each participant could pick out one
    paper. Whatever letter is on the paper is the
    condition that participant experiences first.

58
  • What can you do about
    Demand Characteristics ?
  • If the ps pick up cues during the experiemnt
    they might try to guess what the study is about.
    They might then alter their behaviour to either
  • please you (the experimenter) by giving you the
    results they think you want
  • screw you this means deliberately trying to
    mess up your results
  • act in a socially desirable way and be very
    compliant
  • So, what can you do about it?

59
  • Use the single blind control
  • Try to make sure that the participants do not
    know what the experiment is about. This may
    involve deception. Deception raises ethical
    issues which we will consider later.
  • Use the double blind control
  • Sometimes the experimenter can give clues about
    what the experiment is about (remember the study
    with the dull bright rats by Rosenthal).
    It is a good idea if the person carrying out the
    study doesnt know the aim of the study as well
    as the participants. Again Deception is a problem
    here.

60
Analysing Data from Research continued
  • Measures of dispersion
  • These indicate how varied the scores are around
    the measure of central tendency.
  • Range
  • Standard Deviation

61
  • Range
  • The difference between largest and smallest value
    (1).
  • Easy to calculate.
  • Is distorted by extreme, freak scores.

62
  • Standard deviation
  • more complex measure which takes into account
    every score and its deviation from the mean. (The
    mean deviation from the mean).
  • It gives an indication of how spread out the
    scores are around the mean value in the
    distribution.
  • Best used on interval /ratio data.
  • More accurate measure of dispersion than the
    range.
  • Takes longer to calculate than the range.

63
 How to calculate the standard deviation .
  • Draw a table with 3 columns.
  • In the first column put the scores.
  • Calculate the mean for the set of scores. (mean
    4.4)
  • Take each score in the first column and minus the
    mean value from the score.
  • In the second column put the values of the
    scores minus the mean.

64
  • Square each value in the second column.
  • In the third column put the squares of the
    second column.
  • Add up all the values in the third column.
  • Total 40.4

65
(N 1) (10-1) 9 40.4 / 8
4.4889 v4.4889 2.1187 SD 2.1187
  • Calculate N-1 (N being the number of scores in
    the first column)
  • Divide the result of step 8 (total of 3rd column)
    by the result of step 9 (N-1).
  • Find the square root of the result of step 10,
    this is the standard deviation.

66
  • Choosing an appropriate diagram, graph or chart
    to summarise and display your data.
  • The choice depends on knowing whether data are
  • a)     Nominal, ordinal or interval /ratio.
  • b)    Discrete or continuous
  • Nominal data discrete data - use bar charts,
    pie charts.
  • Ordinal data may use histograms, frequency
    polygons scattergrams for correlation.
  • Interval/ratio data may use histograms,
    frequency polygons scattergrams for
    correlation.

67
  • Histograms Frequency Polygons

The y axis always shows the frequency that is
the number of times a particular score appears in
the data.
68
  • Important notes about histograms-
  • Empty values with in the range must be shown
  • Columns must be the same width for the same sized
    intervals
  • The width of the column indicates the size of the
    interval.
  • Columns always touch each other to make a
    continuous curve (except where there are empty
    values)

69
  • Important notes about frequency polygons-
  • It is similar to a histogram, but instead of
    drawing a column, the mid points of the columns
    are joined with a continuous line.
  • All zero frequencies must be shown within the
    data as well as at the beginning and end of the
    set of data.
  • You can plot more than one set of data on the
    same polygon.

70
Bar Charts
71
  • Important notes about Bar Charts-
  • The y axis (column height) can represent among
    other things, totals, percentages, mean values.
  • Columns are always separated by a gap(although
    sub groups can be clustered together) because
    the categories on the x axis are discrete.
  • It is important that all graphs and charts are
    given an informative title and that the axes are
    clearly labelled. Bar charts should also be given
    a key describing the bars.

72
These are used for nominal discrete data. Each
segment of the chart is calculated by dividing
the frequency for that category by the total
frequency and then multiplying that value by
360. This tells you the size (in degrees) of that
section of the chart.
  • Pie Charts
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