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Title: Review for Exam 2


1
Review for Exam 2
  • Psych 231 Research Methods in Psychology

2
Review Session (Andrew Charles)
  • Review session Thursday Oct 26 in DeGarmo 406 _at_
    800 (PM)

3
Exam 2 Topics
  • APA style
  • Underlying reasons for the organization
  • Parts of a manuscript
  • Variables
  • Sampling
  • Control
  • Experimental Designs
  • Vocabulary
  • Between Within
  • Factorial designs

4
APA style
  • Purpose of presenting your research
  • To get the work out there, to spur further
    research, replication, testing/falsifaction of
    your theory
  • Why the structured format?
  • Clairity To ease communication of what was done
  • Forces a minimal amount of information
  • Provides consistent format within a discipline
  • Allows readers to cross-reference your sources
    easily
  • See Chapter 16 of your textbook

5
Parts of a research report
  • Title Page
  • Abstract
  • Body
  • Introduction Literature review
  • Methods
  • Results
  • Discussion ( Conclusions)
  • References
  • Authors Notes
  • Footnotes
  • Tables
  • Figure Captions
  • Figures

6
Title Page
Short title goes in header (with page number)
on each page of the manuscript
Running head will go on each page of published
article, no more than 50 characters
  • Title should be maximally
  • informative while short
  • (10 to 12 words recommended)

Order of Authorship sometimes carries meaning
Affiliation where the bulk of the research was
done
7
Abstract
  • Abstract
  • short summary of entire paper
  • 100 to 120 words
  • the problem/issue
  • the method
  • the results
  • the major conclusions

8
Body
  • Introduction
  • Background, Literature Review, Statement of
    purpose, Specific hypotheses
  • Methods (in enough detail that the reader can
    replicate the study)
  • Participants
  • Design
  • Apparatus/Materials
  • Procedure
  • Results (state the results but dont interpret
    them here)
  • Verbal statement of results
  • Refer to Tables and figures
  • Statistical Outcomes
  • Discussion (interpret the results)
  • Relationship between purpose and results
  • Theoretical (or methodological) contribution
  • Implications

9
References
  • Authors name
  • Year
  • Title of work
  • Publication information
  • Journal/Book Title
  • Issue
  • Pages

10
Variables
  • Characteristics of the situation
  • Variables
  • Levels
  • Conceptual variables (constructs)
  • Operationalized variables
  • Underlying assumptions
  • Types
  • Independent variables (explanatory)
  • Dependent variables (response)
  • Extraneous variables
  • Control variables
  • Random variables
  • Confound variables

11
Independent variables
  • The variables that are manipulated by the
    experimenter
  • Each IV must have at least two levels
  • Combination of all the levels of all of the IVs
    results in the different conditions in an
    experiment
  • Methods of manipulation
  • Straightforward manipulations
  • Stimulus manipulation
  • Instructional manipulation
  • Staged manipulations
  • Event manipulation
  • Subject manipulations

12
Independent variables
  • Choosing the right range
  • Things to watch out for
  • Demand characteristics
  • Experimenter bias
  • Reactivity
  • Ceiling and floor effects

13
Dependent variables
  • The variables that are measured by the
    experimenter
  • They are dependent on the independent variables
    (if there is a relationship between the IV and DV
    as the hypothesis predicts).
  • How to measure your your construct
  • Can the participant provide self-report?
  • Introspection
  • Rating scales
  • Is the dependent variable directly observable?
  • Choice/decision (sometimes timed)
  • Is the dependent variable indirectly observable?
  • Physiological measures (e.g. GSR, heart rate)
  • Behavioral measures (e.g. speed, accuracy)

14
Dependent variables
  • Measuring
  • Scales of measurement
  • Nominal
  • Ordinal
  • Interval
  • Ratio
  • Errors
  • Validity
  • Reliability
  • Sampling Error
  • Bias

15
Reliability
  • Do you get the same score with repeated
    measurement?
  • Test-restest reliability
  • Internal consistency reliability
  • Inter-rater reliability

16
Validity
  • Does your measure really measure what it is
    supposed to measure?
  • There are many kinds of validity
  • Construct
  • Face
  • Internal
  • Threats
  • History
  • Maturation
  • Selection
  • Mortality
  • Testing
  • External
  • Variable representativeness
  • Subject representativeness
  • Setting representativeness

17
Sampling
  • Typically we dont test everybody
  • Population
  • Sample
  • Goals
  • Maximize
  • Representativeness - to what extent do the
    characteristics of those in the sample reflect
    those in the population
  • Reduce
  • Bias - a systematic difference between those in
    the sample and those in the population
  • Types
  • Probability sampling
  • Simple random sampling
  • Systematic sampling
  • Cluster sampling
  • Non-probability sampling
  • Convenience sampling
  • Quota sampling

18
Extraneous Variables
  • Types
  • Control variables
  • Holding things constant - Controls for excessive
    random variability
  • Random variables may freely vary, to spread
    variability equally across all experimental
    conditions
  • Randomization
  • Confound variables
  • Other variables, that havent been accounted for
    (manipulated, measured, randomized, controlled)
    that can impact changes in the dependent
    variable(s)

19
Experimental Control
  • Sources of Total (T) Variability
  • T NRexp NRother R
  • Our goal is to reduce R and NRother so that we
    can detect NRexp.
  • That is, so we can see the changes in the DV that
    are due to the changes in the independent
    variable(s).

20
Experimental Control
  • Methods of control
  • Comparison
  • Production (picking levels)
  • Constancy/Randomization
  • Problems
  • Excessive random variability
  • Confounding
  • Dissimulation

21
Experimental designs
  • Some vocabulary
  • Factors
  • Levels
  • Conditions
  • Within groups
  • Between groups
  • Control group
  • Single factor designs
  • Factorial designs
  • Main effects
  • Interactions

22
1 Factor - 2-level experiments
  • Advantages
  • Simple, relatively easy to interpret the results
  • Is the independent variable worth studying?
  • If no effect, then usually dont bother with a
    more complex design
  • Sometimes two levels is all you need
  • One theory predicts one pattern and another
    predicts a different pattern
  • Disadvantages
  • True shape of the function is hard to see
  • Interpolation
  • Extrapolation

23
1 Factor - Multi-level experiments
  • Advantages
  • Get a better idea of the true function of the
    relationship
  • Disadvantages
  • Needs more resources (participants and/or
    stimuli)
  • Requires more complex statistical analysis
    (analysis of variance and pair-wise comparisons)

24
Between Within Subjects Designs
  • Between subjects designs
  • Each participant participates in one-and-only-one
    condition of the experiment.
  • Within subjects designs
  • all participants participate in all of the
    conditions of the experiment.

25
Between subjects designs
  • Advantages
  • Independence of groups (levels of the IV)
  • Harder to guess what the experiment is about
    without experiencing the other levels of IV
  • exposure to different levels of the independent
    variable(s) cannot contaminate the dependent
    variable
  • No order effects to worry about
  • Counterbalancing is not required
  • Sometimes this is a must, because you cant
    reverse the effects of prior exposure to other
    levels of the IV
  • Disadvantages
  • Individual differences between the people in the
    groups
  • Non-Equivalent groups
  • Excessive variability

26
Within subjects designs
  • Advantages
  • Dont have to worry about individual differences
  • Same people in all the conditions
  • Variability between groups is smaller
    (statistical advantage)
  • Fewer participants are required
  • Disadvantages
  • Order effects
  • Carry-over effects
  • Progressive error
  • Counterbalancing is probably necessary
  • Range effects

27
Factorial experiments
  • Two or more factors
  • Factors - independent variables
  • Levels - the levels of your independent variables
  • 2 x 4 design means two independent variables, one
    with 2 levels and one with 4 levels
  • Calculate of conditions by multiplying the
    levels, a 2x4 design has 8 different conditions
  • Main effects - the effects of your independent
    variables ignoring (collapsed across) the other
    independent variables
  • Interaction effects - how your independent
    variables affect each other
  • Example 2x2 design, factors A and B
  • Interaction
  • At A1, B1 is bigger than B2
  • At A2, B1 and B2 dont differ

28
2 x 2 factorial design
29
Factorial experiments
  • So there are lots of different potential
    outcomes
  • A main effect of factor A
  • B main effect of factor B
  • AB interaction of A and B
  • With 2 factors there are 8 basic possible
    patterns of results
  • 1) No effects at all
  • 2) A only
  • 3) B only
  • 4) AB only
  • 5) A B
  • 6) A AB
  • 7) B AB
  • 8) A B AB

30
Factorial Designs
  • Advantages
  • Interaction effects
  • One should always consider the interaction
    effects before trying to interpret the main
    effects
  • Adding factors decreases the variability
  • Because youre controlling more of the variables
    that influence the dependent variable
  • This increases the statistical Power of the
    statistical tests
  • Increases generalizability of the results
  • Because you have a situation closer to the real
    world (where all sorts of variables are
    interacting)
  • Disadvantages
  • Experiments become very large, and unwieldy
  • The statistical analyses get much more complex
  • Interpretation of the results can get hard
  • In particular for higher-order interactions
  • Higher-order interactions (when you have more
    than two interactions, e.g., ABC).
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