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7/30/2019 2. Research Design-LDR 280
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RESEARCH DESIGN
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What--What was studied? What about--What aspects of
the subject were studied? What for--What is/was the
significance of the study?
What did prior lit./research say?
What was done--How was thestudy conducted?
What was found? So what? What now?
1. Introduction,
Research Problems/
Objectives, &Justification
2. Literature Review
3. Methodology(Research sample, datacollection, measurement,data analysis)
4. Results & Discussion
5. Implications
6. Conclusions and
Recommendations forFuture Research
PROCESS
OF DESIGNING AND CONDUCTING ARESEARCH PROJECT:
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RESEARCH DESIGN
RESEARCH DESIGN refers to the plan, structure, andstrategy of research--the blueprint that will guide the
research process.
Developing ResearchHypotheses
Intriguing Observation,
Intellectual Curiosity
Defining Research
Problem & Objectives
Testing Hypo.:
Data Analysis &Interpretation
Sampling Design
Refinement of theory
(Inductive Reasoning)
Data Coding,
And
Editing
Developing Operational
Definitions for
Research Variables
Building the Theoretical
Framework and the
Research Model
Data Collection
More Careful Studying
of the Phenomenon
THE PROCESS OF
EMPIRICAL RESEARCH
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RESEARCH DESIGN
CONCLUSION VALIDITY refers to the extent ofresearchers ability to draw accurate conclusions from theresearch. That is, the degree of a studys:
a) Internal Validitycorrectness of conclusions regarding therelationships among vari
ables examinedWhether the research findings accurately reflect how the research
variables are really connected to each other.
b) External ValidityGeneralizability of the findings to the
intended/appropriate
population/settingWhether appropriate subjects were selected for conducting the study
RESEARCH DESIGN: The blueprint/roadmap that will guide theresearch.
The test for the quality of a studys research design is the
studys conclusion validity.
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RESEARCH DESIGN
Variance of the INDEPENDENT & DEPENDENTvariables (Systematic Variance)
Variability of potential NUISANCE/EXTRANEOUS/
CONFOUNDING variables (Confounding Variance)
Variance attributable to ERROR IN MEASUREMENT
(Error Variance).
How?
How do you achieve internal and external validity (i.e.,conclusion validity)?
By effectively controlling 3 types ofvariances:
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Effective Research Design
MAXimize Systematic Variance
MINimize Error Variance
CONtrol Variance of Nuisance/Extraneous/Exogenous/Confounding variables
Guiding principle for effective control ofvariances (and, thus, effective research
design) is:The MAXMINCON Principle
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Effective Research Design
IN EXPERIMENTS?
(where the researcher actually manipulates the independent
variable and measures its impact on the dependent variable): Proper manipulation of experimental conditions
to ensure high variability in indep. var.
IN NON-EXPERIMENTAL STUDIES?
(where independent and dependent variables are measuredsimultaneously and the relationship between them areexamined):
Appropriate subject selection (selecting subjectsthat are sufficiently different with respect to thestudys main var.)--avoid Range Restriction
MAXimizing Systematic Variance:
Widening the range of values of research variables.
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Effective Research Design
Sources of error variance: Poorly designed measurement instruments
(instrumentation error)
Error emanating from study subjects (e.g.,response error)
Contextual factors that reduce a sound/accuratemeasurement instruments capacity to measureaccurately.
How to Minimize Error Variance? Increase validity and reliability of
measurement instruments. Measure variables under as ideal
conditions as possible.
MINimizing Error Variance (measurement error):Minimizing the part of variability in scores that is
caused by error in measurement.
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1. Historical data on pollution and longevity
2. Relationship between likelihood of
hearing problems and high blood pressure
3. Recent stat. show in-vitro kids are 5 times more likely to develop eye tumors
(Culprit: in-vitro fathers older age)
4. Significantly more armed store robberies during the cold winter days. 9
Effective Research Design
May or may not be of primary interest to the researcher,
But, can produce undesirable variation in the study'sdependent variable, and cause misleading or weird results
Thus, if not controlled, can contaminate/distort the truerelationship(s) between the independent and dependentvariable(s) of interest
i.e., confounding var. can result in a spurious-- as opposed tosubstantive--correlation between IV and DV. Example?
Hearing Blood
Problem Pressure
CONtrolling Variance of Confounding/Nuisance Variables:
FIRST, what areNuisance/Confounding Variables?
Age
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Effective Research Design
Conducting the experiment in a controlled environment (e.g.,laboratory), where we can hold values of potential confoundingvariables constant.
Subject selection (e.g., matching subjects in experiments)
Random assignment of subjects (variations of confounding variablesare evenly distributed between the experimental and control groups)
In Survey Research:
Sample selection (e.g., including only subjects with appropriate
characteristicsusing male college graduates as subjects will controlfor potential confounding effects of gender and education)
Statistical Control--anticipating, measuring, and statisticallycontrolling for confounding variables effects (i.e., hold themstatistically constant, or statistically removing their effects).
HOW TO CONTROL FOR CONFOUNDING/NUISANCE VARIABLES?
In Experimental Settings (e.g., Fertilizer Amount Rate of Plant Growth):Some Potential Confounding Variables?
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Effective Research Design
Adequate (full range of) variability in values ofresearch variables,
Precise and accurate measurement,
Identifying and controlling the effects ofconfounding variables, and
Appropriate subject selection
RECAP:Effective research design is a function of ?
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BASIC DESIGNS
Experimental Designs:
True Experimental Studies
Pre-experimental Studies
Quasi-Experimental Studies
Non-Experimental Designs:
Expost Facto/Correlational Studies
SPECIFIC TYPES OF RESEARCH DESIGN
BASIC RESEARCH DESIGNS:
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EXPERIMENTAL DESIGNS
RESULT: Significant Improvement from O1 to O2(i.e., sig. O2 - O1 difference)
QUESTION: Did X (the drug) cause theimprovement?
One of the simplest experimental designs is the ONE GROUP PRETEST-POSTTEST DESIGN--EXAMPLE?
One way to examine Efficacy of a Drug:
O1 X O2
Measure DRUG Measure
Patients Condition Experimental Patients Condition
(Pretest) Condition/ (Posttest)
intervention
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EXPERIMENTAL DESIGNS
Have only shownX is a SUFFICIENT conditionfor the changeY(i.e., presence of X isassociated with a change in Y).
But, is X also a NECESSARY condition forY?
How do you verify the latter? By showing that the change would not have
happened in the absence of Xusing aCONTROL GROUP.
David Humewould have been tempted to say YES.
He was a positivist and wanted to infer causality based
on high correlations between events.
But such an inference could be seriously flawed.
Why?
David Hume, 18th
Century Scottish
Philosopher
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EXPERIMENTAL DESIGNS
CONTROL GROUP simulates absence of X Origin of using Control Groups (A tale from ancient Egypt)
Pretest Post-Test Control Group Design--Suppose random
assignment (R) was used to control confounding variables:
R Exp. Group O1E X O2ER Ctrl Group O1C O2C
RESULT: O2E > O1E & O2C Not> O1CQUESTION: Did X cause the improvement in Exp.
Group?
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EXPERIMENTAL DESIGNS
Need proper form of controle.g., Placebo.
R Exp. Group O1E X O2ER Ctrl Group O1C Placebo O2C
QUESTION: Can we now conclude X caused the improvementin Exp. Group?
NOT NECESSARILY! Why not? Power of suggestibility (The Hawthorne Effect)
CONCLUSION?
Maybe, but be aware of the Experimenter Effect (it tends toprejudice the results especially in medical research).
SOLUTION: Double Blind Experiments (neither the subjects
nor the experimenter knows who is getting the placebo/drug).
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EXPERIMENTAL DESIGNS
Experimental studies need to control for potentialconfounding factors that may threaten internal validityof the experiment:
Hawthorne Effect is only one potential confounding factorin experimental studies.
Other such factors are:
History? Biasing events that occur between pretest and post-test
Maturation? Physical/biological/psychological changes in the subjects
Testing? Exposure to pretest influences scores on post-test
Instrumentation? Flaws in measurement instrument/procedure
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EXPERIMENTAL DESIGNS
Experimental studies need to control for potentialconfounding factors that may threaten internal validity
of the experiment (Continued):
Selection? Subjects in experimental & control groups different from the start
Statistical Regression (regression toward the mean)? Subjects selected based on extreme pretest values
Discovered by Francis Galton in 1877
Experimental Mortality?
Differential drop-out of subjects from experimental and controlgroups during the study
Etc.
Experimental designs mostly used in natural and physicalsciences.
Generally, higher internal validity, lower externalvalidity
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CORRELATIONAL DESIGNS
The design of choice in social sciences since the phenomenon
under study is usually not reproducible in a laboratory setting
Researcher has little or no control over studys indep., dep.and the numerous potential confounding variables,
Often the researcher concomitantly measures all the studyvariables (e.g., independent, dependant, etc.),
Then examines the following types of relationships:
correlations among variables or
differences among groups,
Inability to controlfor effects ofconfounding variables makescausal inferences regarding relationships among variablesmore difficult and, thus:
Generally, higher external validity, lower internal validity
NON-EXPERIMENTAL/CORRELATIONAL DESIGNS
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CORRELATIONAL DESIGNS
NOT NECESSARILY! EXAMPLES: Water Fluoridation and AIDS(San Francisco Chronicle, Sep. 6, 1984)
Armed store robberies and cold weather
Longevity and Pollution
In-vitro birth and likelihood of developing eyetumors
Hearing problem and blood pressure
What can a significant correlation mean then?
Non-experimental designs rely on correlational evidence.
QUESTION: Does a significant correlation between two
variables in a non-experimental study necessarily represent a
causal relationship between those variables?
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CORRELATIONAL STUDIES
a. Both variables are effects of a common cause (or bothcorrelated with a third variable), i.e., spurious correlation(e.g., air pollution and life expectancy, hearing problem &
blood pressure, countrys annual ice cream sales andfrequency of hospital admissions for heat stroke)
b. Both var. alternative indicators of same concept(e.g., Church attend. & Freq. of Praying--religiosity).
c. Both parts ofa common "system" or "complex;" tend tocome as a package(e.g., martini drinking and opera attendance--life style)
d. Fortuitous--Coincidental correlation, no logical relationship
(e.g., Outcome of super bowl games and movement of stockmarket)
AT LEAST FOUR OTHER POSSIBLE INTERPRETATIONS/REASONS
FOR CORRELATIONS BETWEEN TWO VARIABLES:
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CORRELATIONAL STUDIES
Covariation Rule (X and Y must becorrelated)--Necessary but not sufficient condition.
Temporal Precedence Rule (If X is the cause, Yshould not occur until after X).
Internal Validity Rule (Alternative plausibleexplanations of Y and X-Y relationships should beruled out (i.e., eliminate other possible causes).
In practice, this means exercising caution byidentifying potential confounding variables andcontrolling for their effects).
WHEN IS IT SAFER TO INFER CAUSAL
LINKAGES FROM STRONG CORRELATIONS?John Stuart Mills Rules for Inferring Causal Links:
John Stuart Mill
1806-1873
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Questions or Comments
?