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Quantitative
Research Design
& Methods
Topics
 Types of quantitative research
 Measurement Fundamentals
 Concepts and construct validity
 Levels of measurement
 Research Validity
1. Exploratory -- It is a good starting point to get
familiarized with some insights and ideas (e.g.
identify the dependent and independent variables)
2. Descriptive – “The mapping out of a circumstance,
situation, or set of events” (McNabb)
3. Causal—experimenting (statistically speaking) to
asses cause and effect. For example, whether or not
a P.A. program is achieving its objectives.
Experiments in the social science take place
“naturally” (e.g. The effectiveness of Homeland
Security to respond to natural or anthropogenic
hazards).
Quantitative Research
Measurement Fundamentals
 A key difference is that normal science deals with
concepts that are well defined and to great extent
standardized measures (e.g. speed, distance, volume,
weight, size, etc.)
 On the contrary the social science often uses
concepts that are ill defined and therefore the
standardization in terms of how it is measured varies
or there is little agreement (e.g. social class,
development, poverty, etc.)
 Statistics cannot be used until we understand the “the
fundamental nature” of measurement (McNabb)
Measurement Fundamentals
 Thus, our goal is that our measurements of the different
concepts are valid or match as much as possible the
“real” world
 What is a concept?
 “A mental construct that represents phenomena in the real
world”. (Pollock 2005:7)
 The challenge is to transform concepts into concrete
terms (preferable that can be measured).
Pollock’s model
CONCEPT
CONCEPTUAL
DEFINITION
OPERATIONAL
DEFINITION
VARIABLE
(A STATE THAT TAKES
DIFFERENT ATTRIBUTES
O VALUES)
Units of Analysis
 Individuals
 People
 Places
 Groups
 Institutions
 Nations
 Programs
The case of development
 According to Michael Todaro (1994:18)
development is both a physical reality and a
state of mind in which society has, through
some combination of social, economic, and
institutional processes, secured the means for
obtaining a better life, development in all
societies must have a least the following three
objectives:
1. To increase the availability and widen the
distribution of basic life sustaining goods
2. To raise levels of living
3. To expand the range of economic and social
choices
Concept, conceptualization, operationalization,
variables & construct validity
CONCEPT
TARGET
(DEVELOPMENT)
Income distribution
GDP per capita
Civil liberties
Quality of public institutions
Concept, conceptualization, operationalization
& construct validity
 Construct validity is the match between the land
of theory and the land of observation
 How effectively do the variable(s) we use
represent the mental image of the concept and
its manifestation in the real world?
 This is the fundamental question of construct
validity!
Measurement
 If our studies do not allow us to measure
variation in the dependent variable (Y) as
related to variation in our X variables, then we
cannot do any scientific testing.
1. We measure whether certain variables are
meaningful – individually significant.
2. We measure the variation in our variables.
3. We also measure the significance and
explanatory power of our models and the
relationships between variables.
4. If it can be quantified, then you should do so.
Qualities of Variables
 Exhaustive -- Should include all possible
answerable responses. (Schooling: No
Schooling, Elementary, Middle, HS,
College)
 Mutually exclusive -- No respondent
should be able to have two attributes
simultaneously (e.g. Female Male ).
Some Definitions
VARIABLE
ATTRIBUTE ATTRIBUTE
DEVELOPMENT
DEVELOPED DEVELOPING
How do we construct variables?
 In order to “Operationalize” our variables
we must first define them and then select
a means to construct them. We do this
by connecting concepts to observations.
 This requires choosing a level of
measurement.
What Is Level of Measurement?
The relationship of the values that are
assigned to the attributes for a variable
1 2 3
Relationship
Values
Attributes
Variable
Low Medium High
Development
The Levels of Measurement
 Nominal
 Ordinal
 Interval
 Ratio
Nominal Measurement
 The values “name” the attribute
uniquely (classification).
 The value does not imply any ordering
of the cases, for example, jersey
numbers in football and dates in a
calendar.
Nominal continued
 Nominal: These variables consist of categories
that are non-ordered. For example, race or
ethnicity is one variable used to classify people.
 A simple categorical variable is binary or
dichotomous (1/0 or yes/no). For example, did a
councilwomen vote for the ordinance change or not?
 When used as an independent variable, it is often
referred to as a “dummy” variable.
 When used as a dependent variable, the outcome of
some phenomenon is either present or not.
Ordinal
 Ordinal: These variables are also
categorical, but we can say that some
categories are higher than others. For
example, income tax brackets, social class,
levels of education etc.
 However, we cannot measure the distance
between categories, only which is higher or
lower.
 Hence, we cannot say that someone is twice as
educated as someone else.
 Can also be used as a dependent variable.
Ordinal Measurement
When attributes can be rank-ordered…
 Distances between attributes do not have any
meaning, for example, code Educational
Attainment as
0=less than H.S.
1=some H.S.
2=H.S. degree
3=some college
4=college degree
5=post college
Is the distance from 0 to 1 the same as 3 to 4?
Interval
 Interval: Variables of this type are called
scalar or index variables in the sense they
provide a scale or index that allows us to
measure between levels. We can not only
measure which is higher or lower, but how
much so.
 Distance is measured between points on a scale
with even units.
 Good example is temperature based on
Fahrenheit or Celsius.
Interval Measurement
When distance between attributes has
meaning, for example, temperature (in
Fahrenheit) -- distance from 30-40 is
same as distance from 70-80
 Note that ratios don’t make any sense --
80 degrees is not twice as hot as 40
degrees (although the attribute values
are).
Ratio
 Ratio: Similar to interval level variables
in that it can measure the distance
between two points, but can do so in
absolute terms.
 Ratio measures have a true zero, unlike
interval measures.
 For example, one can say that someone is
twice as rich as someone else based on the
value of their assets since to have no
money is based on a starting point of zero.
Ratio
 Has an absolute zero that is meaningful
 Can construct a meaningful ratio
(fraction), for example, number of clients
in past six months
 It is meaningful to say that “...we had
twice as many clients in this period as
we did in the previous six months.
Measurement Hierarchy
NOMINAL
ORDINAL
INTERVAL
RATIO
WEAKEST
STRONGEST
Research Validity
 Construct * (Already explained)
 Internal
 External
 Statistical
Internal Validity
 Are there other causes for what I am
observing?
 If so, a study will lack internal validity if it
cannot rule out plausible alternative
explanations.
 Can the outcome (diminished corruption)
be fully attributed to the program in place
(tougher sanctions)?
Internal Validity
X Y
Our Cause (s)
The outcome
Results
History, Maturation, Testing, Instrumentation, selection, mortality, etc.
•Alternative Explanations
•Rival Hypothesis
•Threats to validity
External Validity
 How well does my study or sample
relate to the general population?
In other words, am I able to generalize
to other population, places, across
time?
External Validity
X Y
Our Cause (s)
The outcome
Results
Selection * treatment History * Treatment
•Alternative Explanations
•Rival Hypothesis
•Threats to validity
Settings & Treatment
Model Misspecification and Spuriousness
 Antecedent variable: A variable that indirectly
affects the relationship between two other
variables.
 For example, College education increases
income. (X  Y)
 However, parents wealth and education (Z) plays a
key role. Thus, income of college graduates may
not be random.
Z X Y
Model Misspecification and Spuriousness
 Intervening Variable: These may be spuriously
related to another relationship.
 Drinking coffee causes cancer.
 Drinking coffee may not be the cause of cancer, but
rather the fact that smokers are also coffee
drinkers.
X Z Y
Model Misspecification and Spuriousness
 Alternative Variables: We also want to control for
variables that would bias our results if omitted.
 In this case, the X variables in a model would produce
biased estimates, undermining their validity and
producing error that leads to inaccurate inferences.
 To forecast correctly the number of medals we need to
know something about institutions and sports culture of a
country.
X Y
Z
Statistical Validity
 The level of measurement used to some extent
determines the type of statistical test used (Chi
squared is more appropriate to test association
between nominal variables)
 We use statistics to test the likelihood or
probability of being wrong in our conclusions
 The selection of an adequate statistical test is
important to quantitative research
 How do we know if the relationship that we
found is due to chance?
Research types and validity
priorities VALIDITY
INTERNAL EXTERNAL CONSTRUCT STATISTICAL
DESCRIPTIVE
EXPLORATORY
EXPLANATORY
EVALUATION
PUBLIC
OPINION
RESEARCH
TYPE

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QUANTITATIVE RESEARCH DESIGN AND METHODS.ppt

  • 2. Topics  Types of quantitative research  Measurement Fundamentals  Concepts and construct validity  Levels of measurement  Research Validity
  • 3. 1. Exploratory -- It is a good starting point to get familiarized with some insights and ideas (e.g. identify the dependent and independent variables) 2. Descriptive – “The mapping out of a circumstance, situation, or set of events” (McNabb) 3. Causal—experimenting (statistically speaking) to asses cause and effect. For example, whether or not a P.A. program is achieving its objectives. Experiments in the social science take place “naturally” (e.g. The effectiveness of Homeland Security to respond to natural or anthropogenic hazards). Quantitative Research
  • 4. Measurement Fundamentals  A key difference is that normal science deals with concepts that are well defined and to great extent standardized measures (e.g. speed, distance, volume, weight, size, etc.)  On the contrary the social science often uses concepts that are ill defined and therefore the standardization in terms of how it is measured varies or there is little agreement (e.g. social class, development, poverty, etc.)  Statistics cannot be used until we understand the “the fundamental nature” of measurement (McNabb)
  • 5. Measurement Fundamentals  Thus, our goal is that our measurements of the different concepts are valid or match as much as possible the “real” world  What is a concept?  “A mental construct that represents phenomena in the real world”. (Pollock 2005:7)  The challenge is to transform concepts into concrete terms (preferable that can be measured).
  • 7. Units of Analysis  Individuals  People  Places  Groups  Institutions  Nations  Programs
  • 8. The case of development  According to Michael Todaro (1994:18) development is both a physical reality and a state of mind in which society has, through some combination of social, economic, and institutional processes, secured the means for obtaining a better life, development in all societies must have a least the following three objectives: 1. To increase the availability and widen the distribution of basic life sustaining goods 2. To raise levels of living 3. To expand the range of economic and social choices
  • 9. Concept, conceptualization, operationalization, variables & construct validity CONCEPT TARGET (DEVELOPMENT) Income distribution GDP per capita Civil liberties Quality of public institutions
  • 10. Concept, conceptualization, operationalization & construct validity  Construct validity is the match between the land of theory and the land of observation  How effectively do the variable(s) we use represent the mental image of the concept and its manifestation in the real world?  This is the fundamental question of construct validity!
  • 11. Measurement  If our studies do not allow us to measure variation in the dependent variable (Y) as related to variation in our X variables, then we cannot do any scientific testing. 1. We measure whether certain variables are meaningful – individually significant. 2. We measure the variation in our variables. 3. We also measure the significance and explanatory power of our models and the relationships between variables. 4. If it can be quantified, then you should do so.
  • 12. Qualities of Variables  Exhaustive -- Should include all possible answerable responses. (Schooling: No Schooling, Elementary, Middle, HS, College)  Mutually exclusive -- No respondent should be able to have two attributes simultaneously (e.g. Female Male ).
  • 14. How do we construct variables?  In order to “Operationalize” our variables we must first define them and then select a means to construct them. We do this by connecting concepts to observations.  This requires choosing a level of measurement.
  • 15. What Is Level of Measurement? The relationship of the values that are assigned to the attributes for a variable 1 2 3 Relationship Values Attributes Variable Low Medium High Development
  • 16. The Levels of Measurement  Nominal  Ordinal  Interval  Ratio
  • 17. Nominal Measurement  The values “name” the attribute uniquely (classification).  The value does not imply any ordering of the cases, for example, jersey numbers in football and dates in a calendar.
  • 18. Nominal continued  Nominal: These variables consist of categories that are non-ordered. For example, race or ethnicity is one variable used to classify people.  A simple categorical variable is binary or dichotomous (1/0 or yes/no). For example, did a councilwomen vote for the ordinance change or not?  When used as an independent variable, it is often referred to as a “dummy” variable.  When used as a dependent variable, the outcome of some phenomenon is either present or not.
  • 19. Ordinal  Ordinal: These variables are also categorical, but we can say that some categories are higher than others. For example, income tax brackets, social class, levels of education etc.  However, we cannot measure the distance between categories, only which is higher or lower.  Hence, we cannot say that someone is twice as educated as someone else.  Can also be used as a dependent variable.
  • 20. Ordinal Measurement When attributes can be rank-ordered…  Distances between attributes do not have any meaning, for example, code Educational Attainment as 0=less than H.S. 1=some H.S. 2=H.S. degree 3=some college 4=college degree 5=post college Is the distance from 0 to 1 the same as 3 to 4?
  • 21. Interval  Interval: Variables of this type are called scalar or index variables in the sense they provide a scale or index that allows us to measure between levels. We can not only measure which is higher or lower, but how much so.  Distance is measured between points on a scale with even units.  Good example is temperature based on Fahrenheit or Celsius.
  • 22. Interval Measurement When distance between attributes has meaning, for example, temperature (in Fahrenheit) -- distance from 30-40 is same as distance from 70-80  Note that ratios don’t make any sense -- 80 degrees is not twice as hot as 40 degrees (although the attribute values are).
  • 23. Ratio  Ratio: Similar to interval level variables in that it can measure the distance between two points, but can do so in absolute terms.  Ratio measures have a true zero, unlike interval measures.  For example, one can say that someone is twice as rich as someone else based on the value of their assets since to have no money is based on a starting point of zero.
  • 24. Ratio  Has an absolute zero that is meaningful  Can construct a meaningful ratio (fraction), for example, number of clients in past six months  It is meaningful to say that “...we had twice as many clients in this period as we did in the previous six months.
  • 26. Research Validity  Construct * (Already explained)  Internal  External  Statistical
  • 27. Internal Validity  Are there other causes for what I am observing?  If so, a study will lack internal validity if it cannot rule out plausible alternative explanations.  Can the outcome (diminished corruption) be fully attributed to the program in place (tougher sanctions)?
  • 28. Internal Validity X Y Our Cause (s) The outcome Results History, Maturation, Testing, Instrumentation, selection, mortality, etc. •Alternative Explanations •Rival Hypothesis •Threats to validity
  • 29. External Validity  How well does my study or sample relate to the general population? In other words, am I able to generalize to other population, places, across time?
  • 30. External Validity X Y Our Cause (s) The outcome Results Selection * treatment History * Treatment •Alternative Explanations •Rival Hypothesis •Threats to validity Settings & Treatment
  • 31. Model Misspecification and Spuriousness  Antecedent variable: A variable that indirectly affects the relationship between two other variables.  For example, College education increases income. (X  Y)  However, parents wealth and education (Z) plays a key role. Thus, income of college graduates may not be random. Z X Y
  • 32. Model Misspecification and Spuriousness  Intervening Variable: These may be spuriously related to another relationship.  Drinking coffee causes cancer.  Drinking coffee may not be the cause of cancer, but rather the fact that smokers are also coffee drinkers. X Z Y
  • 33. Model Misspecification and Spuriousness  Alternative Variables: We also want to control for variables that would bias our results if omitted.  In this case, the X variables in a model would produce biased estimates, undermining their validity and producing error that leads to inaccurate inferences.  To forecast correctly the number of medals we need to know something about institutions and sports culture of a country. X Y Z
  • 34. Statistical Validity  The level of measurement used to some extent determines the type of statistical test used (Chi squared is more appropriate to test association between nominal variables)  We use statistics to test the likelihood or probability of being wrong in our conclusions  The selection of an adequate statistical test is important to quantitative research  How do we know if the relationship that we found is due to chance?
  • 35. Research types and validity priorities VALIDITY INTERNAL EXTERNAL CONSTRUCT STATISTICAL DESCRIPTIVE EXPLORATORY EXPLANATORY EVALUATION PUBLIC OPINION RESEARCH TYPE