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1st - sem 1
Research Methods Semester 1:
Variables, Designs & Hypotheses
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Created by
Natasha Hess
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Cards (32)
What are the differences between experimental, quasi-experimental, and correlational designs?
Experimental:
IV
manipulated
, causality inferred
Quasi-experimental: IV not manipulated, harder to eliminate
confounding
variables
Correlational: No manipulation, measures relationships between variables
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What types of variables and measurement scales are identified in the study material?
Different
types
of
variables
and
measurement scales
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What types of hypotheses are explained in the study material?
Research,
statistical
,
null
, and
alternative
hypotheses
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What are the steps in conducting a research study?
Research question
Theory
Generate
hypotheses
Design a study
Ethical approval
Collect
data
Analyze data
Write up as a research report
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What does the independent variable (IV) represent in experimental methods?
Something that we
manipulate
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What does the dependent variable (DV) represent in experimental methods?
What we are
recording
or measuring
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What can we infer when changes in the DV are due to changes in the IV?
We can infer
causality
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What characterizes quasi-experimental methods?
The
IV
cannot be
manipulated
Examples include
non-equivalent groups
and pretest-posttest designs
Harder to eliminate
confounding variables
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What are the key features of correlational methods?
No
manipulations
are made
Measures two or more
variables
Determines the extent to which they are related
Cannot infer
causality
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How many independent variables can an experiment have?
An experiment can have
more than one
IV
or factors
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What should each independent variable have in an experiment?
Two or more
levels
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In the Stroop task example, what is the independent variable?
Congruency
of word/colour stimuli
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How many dependent variables can an experiment have?
An experiment can have one or more
DVs
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What is important to specify when measuring the dependent variable?
How we measure our DV (
operationalization
)
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What is a confounding variable?
A variable we don’t
manipulate
that may influence results
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What are the characteristics of between-subjects designs?
Participants
only take part in one level of the
IV
Random assignment can account for
individual differences
Less powerful, requiring more participants to detect a genuine effect
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What are the characteristics of within-subjects designs?
The same participant performs all levels of the
IV
Known as
repeated measures design
More powerful, requiring fewer
participants
to detect a genuine effect
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What are order effects in within-subjects designs?
Results may be influenced by the order of
conditions
Can be due to practice or boredom
Best addressed through
randomization
of trials and counterbalancing
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What is a matched subjects design?
Used when a
within-subjects design
is not feasible
Participants are matched based on
demographic characteristics
The pair is tested as one individual over two levels of an
IV
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What characterizes correlational designs?
Variables
cannot be manipulated
Examines existing variables to see how they
co-vary
Does not imply
causation
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What is a hypothesis?
A
theory-driven
idea explaining a narrow set of
phenomena
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What are the different types of hypotheses mentioned?
Experimental hypothesis
Statistical hypothesis
Null hypothesis
(H0)
Alternative hypothesis
(H1)
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What is the difference between experimental and statistical hypotheses?
Experimental hypothesis: Conceptual idea explaining an observation
Statistical hypothesis: Specific statement used to collect
data
and test the hypothesis
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What does the null hypothesis (H0) imply?
Observations from
samples
imply they come from the same
population
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What does the null hypothesis state for parametric statistics?
All means are equal: H0:
µ1
=
µ2
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What is the prediction made by the null hypothesis in the Stroop task example?
Mean
reaction times
will be the same for
congruent
and
incongruent
stimuli
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What does the alternative hypothesis (H1) predict?
There will be a
significant
difference or relationship between
variables
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What is a non-directional hypothesis?
There will be a difference in
mean reaction times
for
congruent
and
incongruent
stimuli
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What is a directional hypothesis?
Mean
reaction times
will be shorter for
congruent
stimuli than for
incongruent
stimuli
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What are the properties of null and alternative hypotheses?
Mutually exclusive
: only one can be true
Exhaustive
: covers all possible outcomes
In the Stroop task, means can either be the same (
H0
) or different (
H1
)
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What is null hypothesis significance testing?
Reject the null hypothesis when the
probability
of it being true (p) is lower than a specific criterion (
α
)
Involves generating a
test statistic
and setting a specific (α) criterion
Helps determine the
probability value
(
p-value
)
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What is the typical criterion (α) used for rejecting the null hypothesis?
Usually set at
.05
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