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Psychology
Research methods
Types of data
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Cards (31)
Quantitative data
Numerical
data that is statistically analysed to identify
patterns
and make comparisons
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Quantitative data
Time taken to run
100m
Number of items
recalled
in a memory test
Score on an
IQ
test
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How quantitative data is obtained
Administering closed, rating-style questions in a questionnaire
Tallying behavioural categories in an observation
Conducting a content analysis of interviews
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Question producing quantitative data
How many hours do you spend on Instagram a day?
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Quantitative data
Lacks
detail
Numerical
data cannot be
elaborated
on
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Lack of detail in quantitative data
May mean less meaningful conclusions are drawn
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Quantitative data
Analysis is objective
Relies on numerical data that does not need to be subjectively interpreted
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Objective analysis of quantitative data
Researchers are more likely to draw non-biased conclusions
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Quantitative data
Easy
to
analyse
Numerical
data can be quickly
categorised
, summarised and compared
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Easy
analysis of
quantitative data
Speeds up
the research process and allows for more
easy
comparison of data within and between studies
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Qualitative
data
Non-numerical,
descriptive
data that uses words to give a
full description
of what people think or feel
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Qualitative
data
A person experiencing
depression
describing their symptoms
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How
qualitative
data is obtained
Using
open
questions in a questionnaire
Using
interviews
Conducting a
thematic
analysis
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Question producing
qualitative
data
Why might scrolling-through Instagram make someone feel sad?
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Qualitative data
In-depth
Descriptive data enables participants to elaborate on their responses
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In-depth qualitative
data
May mean that more meaningful
conclusions
are drawn
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Qualitative
data
Analysis is
subjective
Relies on researchers having to interpret
descriptive
data
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Subjective analysis of qualitative data
Researchers may draw
biased
conclusions
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Qualitative
data
Difficult
to analyse
Descriptive
data can result in a variety of individual
responses
that are difficult to summarise and compare
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Difficulty analysing
qualitative
data
Slows down the research process and makes it
difficult
to compare data within and
between
studies
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Primary data
Data that is gathered directly from the
participants
and is collected specifically for the purpose of the
current
investigation
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Methods to obtain primary data
Experiment
Observation
Interview
Questionnaire
Case study
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Strengths of primary data
More likely to gather the required information
Likely to lead to
greater insight
Can be
controlled
by the researcher
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Limitations of primary data
Can be
time consuming
and
costly
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Secondary
data
Data that is not gathered directly from participants, instead it is pre-existing data that was
not
originally collected for the purpose of the current
investigation
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Sources of secondary data
Journal articles
(research reports)
Internet
sources
Newspapers
Company documents
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Limitations of secondary data
Less
likely to gather the required information
Less
likely to provide
insightful
detail
Cannot
be controlled by the researcher
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Strengths of secondary data
Can be less
time consuming
and
costly
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Meta-analysis
An example of
secondary
data where other researchers' findings from a series of studies are collected and
analysed
to present an overall result
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Strengths of meta-analyses
Conclusions are typically drawn from
large sample sizes
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Limitations of meta-analyses
May be affected by
confounding
variables
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