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Common Designs and Quality Issues in Quantitative Research

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Title: Common Designs and Quality Issues in Quantitative Research


1
Common Designs and Quality Issues in Quantitative
Research
  • Research Methods and Statistics

2
Intended Learning Outcomes
  • To familiarise yourself with the different types
    of quantitative research designs commonly used in
    occupational psychology research
  • To understand the concepts of validity and
    reliability and why these are important to
    consider when designing research studies

3
What is Research Design
  • A design specifies the logical structure of a
    research project and the plan that will be
    followed in the execution. It determines whether
    a study is capable of obtaining an answer to the
    research question in a manner consistent with the
    appropriate research methodology and the
    theoretical and philosophical perspectives
    underlying the study.
  • (Sim Wright, 2000 27)

4
Elements of Research Designs
  • phenomena/variables to be researched
  • how will these phenomena/variables be measured?
    (what method/technique?)
  • who/where will the data be collected from?
  • when will the data be collected?
  • what type of data will I have as a result?
  • what will be the consequences of this for data
    analysis?

5
Elements of Research Designs
  • phenomena/variables to be researched
  • how will these phenomena/variables be measured?
    (what method/technique?)
  • who/where will the data be collected from?
  • when will the data be collected?
  • what type of data will I have as a result?
  • what will be the consequences of this for data
    analysis?

6
Common Designs
  • Group differences
  • Relationships between variables
  • correlations
  • regression models
  • Surveys / questionnaires
  • Time series
  • Other designs

7
Group Differences
INTERVENTION PRE
INTERVENTION POST
CONTROL PRE
CONTROL POST
e.g. to determine the effect of a training
intervention on scores
8
(No Transcript)
9
Group Differences Designs - Variations
  • No control group
  • More than two groups
  • More than one outcome measure
  • No time element
  • More than two time points
  • Etc.

10
Relationships between Variables
  • Bivariate relationships
  • each participant is measured on two or more
    variables (either both are categorical or both
    are ordinal or above)
  • Regression models
  • based on linear correlations
  • various predictor variables and one outcome
    variable

11
Bivariate Relationships Categorical Data
PUBLIC SCHOOL PRIVATE SCHOOL
READING DIFFICULTIES 8 2
NO READING DIFFICULTIES 24 22
e.g. to find out whether the proportion of pupils
with reading difficulties varies from public to
private schools
12
Bivariate Relationships Ordinal, Interval or
Ratio Data
e.g. to find out how the amount of TV viewing is
correlated with academic performance
13
Regression
PREVIOUS SAT SCORE
FREE MEALS
TV VIEWING
ATTENDANCE RECORD
GENDER
ACADEMIC PERFORMANCE
e.g. which are the best predictors of academic
performance? e.g. which are the best predictors
for whether a child will get a statement of
educational needs?
14
Surveys / Questionnaires
  • May be used
  • as an outcome measure (evaluation)
  • to describe (the attitudes of) a particular group
    SURVEY
  • Surveys can be used to check for
  • differences between groups
  • relationships between variables

15
Time Series
  • multiple data points (50) recorded data
  • useful for evaluation when trend and/or
    seasonality are existent

16
Other Designs
  • Single case designs

A
A
B
B
17
Which One to Choose???
  • Your choice of study design needs to take into
    account
  • your research question
  • data available / feasible
  • tests available
  • other details
  • trends / seasonality existent?

18
Making Sure your Study is a Good Quality One
  • Just two thing to worry about
  • High internal and external validity
  • Validity and reliability of instruments

19
Internal and External Validity
  • Interval validity refers to the lack of
    confounding variables (related to design)
  • (e.g. can we really conclude the childrens
    reading performance has improved because of our
    IV intervention we introduced?)
  • External validity refers to whether we can
    generalise our results to our target population
    (related to sampling)

20
Threats to Internal Validity
REGRESSION TO THE MEAN
MORTALITY
COMPENSATORY RIVALRY
MATURATION
DIFFUSION OF BENEFIT
EXPERIMENTER BIAS
21
External Validity
  • Can we generalise our findings to other
    people/places/settings/conditions/etc.?
  • Related to
  • artificiality
  • does the experimental situation resemble the real
    world?
  • sample selection
  • is our sample different from the population you
    want to apply our findings to?

22
High Quality Instruments
  • Validity Does your test measure what it claims
    to?
  • Reliability Does it measure it consistently?


Not reliable therefore not valid Reliable but not valid Both reliable and valid
Reproduced from Trochim (2002) on
http//www.socialresearchmethods.net/kb/reliabilit
y.htm
23
Relationship between Validity and Reliability
random error
RELIABILITY
systematic error
VALIDITY
24
When Is Quality Compromised?
  • Ethics
  • Practical issues
  • THINK ABOUT
  • How do validity and ethics relate to one another?
  • Is it ethical to sacrifice validity in a study to
    make it more ethical?
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