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PURPOSE OF
      CAUSAL – COMPARATIVE
            RESEARCH
 To determine cause of differences that
already existed between or among groups
then attempts to determine the reason, or the
results, of the differences

 Used when independent variables cannot
or should not be examined using controlled
experiments

 A common design in educational research
studies
CAUSAL - COMPARATIVE
                &
     CORRELATIONAL RESEARCH
 Lack of manipulation

 Requires caution interpreting
 results
   causation is difficult to infer


 Both can support subsequent
 experimental research
CAUSAL - COMPARATIVE
             VERSUS
     CORRELATIONAL RESEARCH
  CAUSAL – COMPARATIVE
 CORRELATIONAL
   does not to understand cause
  Attempts attempt to understand
  and effect effect
    cause and
   investigates at least independent
   investigates two or more
  one variable
    variables
   two or more groups, comparing
   one groupof subjects a score on
  these groups / requires
  each variable for each subject use
     compare averages or
   analyzes tablesusing scatterplots
  crossbreak data when analyzing
  data or correlational coefficients
    and/
CAUSAL - COMPARATIVE
                &
      EXPERIMENTAL RESEARCH
 requires     at  least   one
 categorical variable (group
 membership)
 both compare performances
 (average scores) to determine
 relationships
 compares separate groups of
 subjects
CAUSAL - COMPARATIVE
              VERSUS
      EXPERIMENTAL RESEARCH
 EXPERIMENTAL
  CAUSAL - COMPARATIVE
   causalcomparisons
    group group comparisons
   individuals already in groups
  Individuals randomly assigned to
   before research begins
   treatment groups
   independent not manipulated
                           variable
   manipulated by the researcher
      cannot
      should not
      is not
 NON – MANIPULATED
 VARIABLES
   Age
   Sex
   Ethnicity
   Learning Style
   Socioeconomic Status
   Parental Educational Level
   Family Environment
   Preschool Attendance
   Type of School
INSTRUMENTATION
Any of these devices can be used:
   Achievement Tests
   Questionnaires
   Interview Schedules
   Attitudinal Measures
   Observational Devices
DESIGN
 Select two groups that differ
 on     some     independent
 variable
  I.  One group possesses some
      characteristics that the
      other does not
  II. Each group possesses the
      characteristic    but  in
      differing amounts
ONE GROUP
POSSESSES SOME CHARACTERISTICS
   THAT THE OTHER DOES NOT
               INDEPENDENT        DEPENDENT
       GROUP     VARIABLE         VARIABLE
                      C                O
         I     (Group possesses   (Measurement)
                Characteristic)
                     -C                O
         II      (Group does      (Measurement)
                  not possess
                characteristic)
EACH GROUP POSSESSES THE
CHARACTERISTIC BUT IN DIFFERING
         AMOUNTS
               INDEPENDENT          DEPENDENT
       GROUP     VARIABLE           VARIABLE
                      C1                 O
         I     (Group possesses     (Measurement)
                characteristic 1)
                      C2                 O
         II    (Group possesses     (Measurement)
               characteristic 2 )
THREATS TO
      INTERNAL VALIDITY
  IN CAUSAL COMPARATIVE
          RESEARCH
WEAKNESSES:
 Lack of randomization
 Inability to manipulate
  an independent variable
WAYS OF CONTROLLING
  EXTRANEOUS VARIABLES

Matching of Subjects
Finding or Creating
 Homogeneous Subgroups
Statistical Matching
OTHER THREATS

Loss of Subjects
Location
Instrumentation
THREATS UNDER INSTRUMENTATION


Instrument Decay
Data Collector Characteristics
Data Collector Bias
EVALUATING THREATS TO
         INTERNAL VALIDITY
• Step 1: ask: What specific factors either
  are known to affect or may logically be
  expected to affect the variable on
  which groups are being compared?
• Step 2: ask: What is the likelihood of
  the comparison groups differing on
  each factor?
• Step 3: Evaluate the threats on the
  basis of how likely they are to have an
  effect.
SUBJECT CHARACTERISTICS

Socioeconomic Level of the Family
Gender
Ethnicity
Marketable Job Skills
DATA ANALYSYS IN CAUSAL
      COMPARATIVE STUDIES
•The first step in a data analysis of a causal-
comparative study is to construct frequency
polygons.
•Means and standard deviations are usually
calculated if the variables involved are
quantitative.
•The most commonly used test in this study is a
t-test for differences between studies.
•Analysis of covariance is particularly useful in
this study.
•The results of causal-comparative studies
should always be interpreted with caution,
because they do not prove cause and effect.
ASSOCIATIONS BETWEEN
    CATEGORICAL VARIABLES
Grade level and gender of teachers
 (hypothetical data)
  GRADE LEVEL    MALES      FEMALES   TOTAL
   Elementary     40          70       110
   Junior High    50          40       90
   Senior High    80          60       140
     TOTAL        170         170      340
 Such data can be used for purposes of
  prediction and with caution in the search
  for cause and effect. Knowing that a person
  is a teacher and male, for example, we can
  predict with some degree of confidence
  that he teaches either junior or senior high
  school, since 76% of males who are
  teachers do so.
 40/170 is the probability of error in this
  table.
 In this example, the probability that gender
  is a major cause of teaching level seems
  quite remote.
 Further, prediction from cross break tables
  is much less precise than the scatter plots.
ANALYSIS OF COVARIANCE
 Is used to adjust initial group differences
  on variables used in causal-comparative
  and experimental research studies.
 Analysis of covariance adjusts scores on a
  dependent variable for initial differences
  on some other variable related to
  performance on the dependent.
 Suppose we were doing a study to
  compare two methods, X and Y, of
  teaching fifth graders to solve math
  problems.
 Covariate analysis statistically adjusts the
  scores of method Y to remove the initial
  advantage so that the results at the end of
  the study can be fairly compared as if the
  two groups started equally.
DATA ANALYSIS
                    AND
               INTERPRETATION
 Analysis of data involves a variety of
 descriptive and inferential statistics.
 The most commonly used descriptive
 statistics are
    (a) the mean, which indicates the
 average performance of a group on
 some measure of a variable, and
    (b) the standard deviation, which
 indicates how spread out a set of scores
 is around the mean, that is, whether the
 scores are relatively homogeneous or
 heterogeneous around the mean.
 The most commonly used inferential
 statistics are:
   (a) the t test, used to determine
 whether the means of two groups are
 statistically different from one
 another;
   (b) analysis of variance, used to
 determine if there is significant
 difference among the means of three
 or more groups; and
   (c) chi square, used to compare
 group frequencies, or to see if an
 event occurs more frequently in one
 group than another.
LACK OF RANDOMIZATION
 Lack of randomization, manipulation,
 and control factors make it difficult to
 establish cause-effect relationships
 with any degree of confidence.
 However, reversed causality is more
 plausible and should be investigated.
 It is equally plausible that
 achievement affects self-concept, as it
 is    that     self-concept      affects
 achievement.
 The way to determine the correct order
 of causality-which variable caused
 which- is to determine which one
 occurred first.
 The possibility of a third, common
 explanation in causal-comparative
 research is plausible in many situations.
 One way to control for a potential
 common cause is to equate groups on
 that variable.
 To investigate or control for alternative
 hypotheses , the researcher must be
 aware of them and must present
 evidence that they are not in fact the
 true explanation for the behavioral
 differences being investigated.
gfff

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Causal – comparative

  • 1.
  • 2. PURPOSE OF CAUSAL – COMPARATIVE RESEARCH  To determine cause of differences that already existed between or among groups then attempts to determine the reason, or the results, of the differences  Used when independent variables cannot or should not be examined using controlled experiments  A common design in educational research studies
  • 3. CAUSAL - COMPARATIVE & CORRELATIONAL RESEARCH  Lack of manipulation  Requires caution interpreting results  causation is difficult to infer  Both can support subsequent experimental research
  • 4. CAUSAL - COMPARATIVE VERSUS CORRELATIONAL RESEARCH CAUSAL – COMPARATIVE  CORRELATIONAL  does not to understand cause Attempts attempt to understand and effect effect cause and  investigates at least independent  investigates two or more one variable variables  two or more groups, comparing  one groupof subjects a score on these groups / requires each variable for each subject use compare averages or  analyzes tablesusing scatterplots crossbreak data when analyzing data or correlational coefficients and/
  • 5. CAUSAL - COMPARATIVE & EXPERIMENTAL RESEARCH  requires at least one categorical variable (group membership)  both compare performances (average scores) to determine relationships  compares separate groups of subjects
  • 6. CAUSAL - COMPARATIVE VERSUS EXPERIMENTAL RESEARCH  EXPERIMENTAL CAUSAL - COMPARATIVE  causalcomparisons group group comparisons  individuals already in groups Individuals randomly assigned to before research begins treatment groups  independent not manipulated variable manipulated by the researcher  cannot  should not  is not
  • 7.  NON – MANIPULATED VARIABLES  Age  Sex  Ethnicity  Learning Style  Socioeconomic Status  Parental Educational Level  Family Environment  Preschool Attendance  Type of School
  • 8. INSTRUMENTATION Any of these devices can be used:  Achievement Tests  Questionnaires  Interview Schedules  Attitudinal Measures  Observational Devices
  • 9. DESIGN  Select two groups that differ on some independent variable I. One group possesses some characteristics that the other does not II. Each group possesses the characteristic but in differing amounts
  • 10. ONE GROUP POSSESSES SOME CHARACTERISTICS THAT THE OTHER DOES NOT INDEPENDENT DEPENDENT GROUP VARIABLE VARIABLE C O I (Group possesses (Measurement) Characteristic) -C O II (Group does (Measurement) not possess characteristic)
  • 11. EACH GROUP POSSESSES THE CHARACTERISTIC BUT IN DIFFERING AMOUNTS INDEPENDENT DEPENDENT GROUP VARIABLE VARIABLE C1 O I (Group possesses (Measurement) characteristic 1) C2 O II (Group possesses (Measurement) characteristic 2 )
  • 12. THREATS TO INTERNAL VALIDITY IN CAUSAL COMPARATIVE RESEARCH WEAKNESSES: Lack of randomization Inability to manipulate an independent variable
  • 13. WAYS OF CONTROLLING EXTRANEOUS VARIABLES Matching of Subjects Finding or Creating Homogeneous Subgroups Statistical Matching
  • 14. OTHER THREATS Loss of Subjects Location Instrumentation
  • 15. THREATS UNDER INSTRUMENTATION Instrument Decay Data Collector Characteristics Data Collector Bias
  • 16. EVALUATING THREATS TO INTERNAL VALIDITY • Step 1: ask: What specific factors either are known to affect or may logically be expected to affect the variable on which groups are being compared? • Step 2: ask: What is the likelihood of the comparison groups differing on each factor? • Step 3: Evaluate the threats on the basis of how likely they are to have an effect.
  • 17. SUBJECT CHARACTERISTICS Socioeconomic Level of the Family Gender Ethnicity Marketable Job Skills
  • 18. DATA ANALYSYS IN CAUSAL COMPARATIVE STUDIES •The first step in a data analysis of a causal- comparative study is to construct frequency polygons. •Means and standard deviations are usually calculated if the variables involved are quantitative. •The most commonly used test in this study is a t-test for differences between studies. •Analysis of covariance is particularly useful in this study. •The results of causal-comparative studies should always be interpreted with caution, because they do not prove cause and effect.
  • 19. ASSOCIATIONS BETWEEN CATEGORICAL VARIABLES Grade level and gender of teachers (hypothetical data) GRADE LEVEL MALES FEMALES TOTAL Elementary 40 70 110 Junior High 50 40 90 Senior High 80 60 140 TOTAL 170 170 340
  • 20.  Such data can be used for purposes of prediction and with caution in the search for cause and effect. Knowing that a person is a teacher and male, for example, we can predict with some degree of confidence that he teaches either junior or senior high school, since 76% of males who are teachers do so.  40/170 is the probability of error in this table.  In this example, the probability that gender is a major cause of teaching level seems quite remote.  Further, prediction from cross break tables is much less precise than the scatter plots.
  • 21. ANALYSIS OF COVARIANCE  Is used to adjust initial group differences on variables used in causal-comparative and experimental research studies.  Analysis of covariance adjusts scores on a dependent variable for initial differences on some other variable related to performance on the dependent.  Suppose we were doing a study to compare two methods, X and Y, of teaching fifth graders to solve math problems.  Covariate analysis statistically adjusts the scores of method Y to remove the initial advantage so that the results at the end of the study can be fairly compared as if the two groups started equally.
  • 22. DATA ANALYSIS AND INTERPRETATION  Analysis of data involves a variety of descriptive and inferential statistics.  The most commonly used descriptive statistics are (a) the mean, which indicates the average performance of a group on some measure of a variable, and (b) the standard deviation, which indicates how spread out a set of scores is around the mean, that is, whether the scores are relatively homogeneous or heterogeneous around the mean.
  • 23.  The most commonly used inferential statistics are: (a) the t test, used to determine whether the means of two groups are statistically different from one another; (b) analysis of variance, used to determine if there is significant difference among the means of three or more groups; and (c) chi square, used to compare group frequencies, or to see if an event occurs more frequently in one group than another.
  • 24. LACK OF RANDOMIZATION  Lack of randomization, manipulation, and control factors make it difficult to establish cause-effect relationships with any degree of confidence.  However, reversed causality is more plausible and should be investigated.  It is equally plausible that achievement affects self-concept, as it is that self-concept affects achievement.
  • 25.  The way to determine the correct order of causality-which variable caused which- is to determine which one occurred first.  The possibility of a third, common explanation in causal-comparative research is plausible in many situations.  One way to control for a potential common cause is to equate groups on that variable.  To investigate or control for alternative hypotheses , the researcher must be aware of them and must present evidence that they are not in fact the true explanation for the behavioral differences being investigated.
  • 26. gfff