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QUANTITATIVE RESEARCH
    METHODOLOGIES




CORRELATIONAL RESEARCH
THE NATURE OF
   CORRELATIONAL RESEARCH
• Sometimes called associational research
• It investigates the possibility of relationships
  between only two variables
• Also sometimes referred to as a form of
  descriptive research
• Describes the degree to which two or more
  quantitative variables are related
PURPOSES OF CORRELATIONAL
         RESEARCH
• Two basic purposes
1. Help explain important human behaviors
   (Explanatory Studies)

2. Predict likely outcomes
   (Prediction Studies)
EXPLANOTARY STUDIES
• Researchers often investigate a number of
  variables they believe are related to a more
  complex variable.
• Unrelated variables dropped from further
  consideration
• Most researchers most probably trying to
  gain some ideas about cause and effect
• However it does not establish cause and
  effect
PREDICTION STUDIES
• Predict a score on one variable if a score on
  the other variable is known
• Determine the predictive validity of
  measuring instruments
• Predictor Variable; variable that is used to
  make the prediction
• Criterion Variable; variable about which the
  prediction is made
Using Scatter plots to Predict a Score

• We can use the scatter plots to find a
  correlation between the variables

• correlational research.pptx
A simple Prediction Equation
• Used to express the regression line

• We gain confidence in using the
                       Y'


  prediction equation to make future
  predictions if there is a close similarity
  between two results
MORE COMPLEX
  CORRELATIONAL TECHNIQUES

1. Multiple Regressions; technique that
  enables researchers to determine a
  correlation between a criterion variable

• The best combination of two or more
  predictor variables
2. The Coefficient of Multiple Correlation

• Symbolized by R; indicates the strength of
  the correlation between the combination of
  the predictor variables and the criterion
  variables.
• multiple correlation.jpg
• The higher R is, the more reliable a
  prediction will be
3. The Coefficient of Determination

• The square of the correlation between a
  predictor and a criterion variable

• Indicates the percentage of the variability
  among the criterion scores that can be
  attributed to differences in the scores on
  the predictor variable
4. Discriminant Function Analysis

• Technique used when the technique of
  multiple regression cannot be used when
  the criterion variable is categorical


5. Factor Analysis
• Technique that allows a researcher to
  determine if many variables can be
  described by a few factors.
BASIC STEPS IN
   CORRELATIONAL RESEARCH
1. Problem Selection
• Three major types of problems;
   a. is variable X related to variable Y?
   b. how well does variable P predict variable C?
   c. What are the relationship among a large
   number of variables and what predictions can
   be made?
2. Sample
• Should be selected carefully, and if
  possible, randomly.
• Not less than 30.


3. Instruments
• Most correlational studies involve the
  administration of some types of
  instruments (tests, questionnaire, and so
  on).
4. Design and Procedures
• Design used quite straightforward.


5. Data Collection
• Data on both variables will usually be
  collected in a short time.
• Instruments used are administered in a
  single session or two sessions
THREATS TO INTERNAL
           VALIDITY
• There are some threats identified in
  conducting correlational research


1. Subject Characteristics
• Individuals or groups have two or more
  characteristics; might be a cause of
  variation in the other two variables.
2. Location
• Location is different for different subject
• One location may be more comfortable
  compared to others

3. Instrumentation
• Instrument decay; care must be taken to ensure
  the observers don’t become tired, bored or
  inattentive
• Data collector characteristics; different
  gender, age or ethnicity may affect specific
  response
4. Testing
• Experience of responding to the first
  instrument may influence subject responses
  to the second instrument


5. Mortality
• Loss of subjects may make a relationship
  more (or less) likely in the remaining data
EVALUATING THREATS TO
      INTERNAL VALIDITY
• Follows a procedure similar to the
  experimental research.

1. Subject Characteristics
• Four of many possible characteristics
  a. Severity of disability
  b. Socioeconomic level of parents
  c. Physical strength and coordination
  d. Physical appearance
2. Mortality
• Loss of subjects can be expected to reduce
  magnitude of correlation


3. Location
• Threats could be controlled by
  independently assessing the job-site
  environments.
4. Instrumentation
• Instrument decay; observations should
  scheduled
• Data collector characteristics; interaction of
  data collectors and supervisors is a
  necessary parts
• Data collector bias; observers should have
  no knowledge of job ratings
Correlational research

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Correlational research

  • 1. QUANTITATIVE RESEARCH METHODOLOGIES CORRELATIONAL RESEARCH
  • 2. THE NATURE OF CORRELATIONAL RESEARCH • Sometimes called associational research • It investigates the possibility of relationships between only two variables • Also sometimes referred to as a form of descriptive research • Describes the degree to which two or more quantitative variables are related
  • 3. PURPOSES OF CORRELATIONAL RESEARCH • Two basic purposes 1. Help explain important human behaviors (Explanatory Studies) 2. Predict likely outcomes (Prediction Studies)
  • 4. EXPLANOTARY STUDIES • Researchers often investigate a number of variables they believe are related to a more complex variable. • Unrelated variables dropped from further consideration • Most researchers most probably trying to gain some ideas about cause and effect • However it does not establish cause and effect
  • 5. PREDICTION STUDIES • Predict a score on one variable if a score on the other variable is known • Determine the predictive validity of measuring instruments • Predictor Variable; variable that is used to make the prediction • Criterion Variable; variable about which the prediction is made
  • 6. Using Scatter plots to Predict a Score • We can use the scatter plots to find a correlation between the variables • correlational research.pptx
  • 7. A simple Prediction Equation • Used to express the regression line • We gain confidence in using the Y' prediction equation to make future predictions if there is a close similarity between two results
  • 8. MORE COMPLEX CORRELATIONAL TECHNIQUES 1. Multiple Regressions; technique that enables researchers to determine a correlation between a criterion variable • The best combination of two or more predictor variables
  • 9. 2. The Coefficient of Multiple Correlation • Symbolized by R; indicates the strength of the correlation between the combination of the predictor variables and the criterion variables. • multiple correlation.jpg • The higher R is, the more reliable a prediction will be
  • 10. 3. The Coefficient of Determination • The square of the correlation between a predictor and a criterion variable • Indicates the percentage of the variability among the criterion scores that can be attributed to differences in the scores on the predictor variable
  • 11. 4. Discriminant Function Analysis • Technique used when the technique of multiple regression cannot be used when the criterion variable is categorical 5. Factor Analysis • Technique that allows a researcher to determine if many variables can be described by a few factors.
  • 12. BASIC STEPS IN CORRELATIONAL RESEARCH 1. Problem Selection • Three major types of problems; a. is variable X related to variable Y? b. how well does variable P predict variable C? c. What are the relationship among a large number of variables and what predictions can be made?
  • 13. 2. Sample • Should be selected carefully, and if possible, randomly. • Not less than 30. 3. Instruments • Most correlational studies involve the administration of some types of instruments (tests, questionnaire, and so on).
  • 14. 4. Design and Procedures • Design used quite straightforward. 5. Data Collection • Data on both variables will usually be collected in a short time. • Instruments used are administered in a single session or two sessions
  • 15. THREATS TO INTERNAL VALIDITY • There are some threats identified in conducting correlational research 1. Subject Characteristics • Individuals or groups have two or more characteristics; might be a cause of variation in the other two variables.
  • 16. 2. Location • Location is different for different subject • One location may be more comfortable compared to others 3. Instrumentation • Instrument decay; care must be taken to ensure the observers don’t become tired, bored or inattentive • Data collector characteristics; different gender, age or ethnicity may affect specific response
  • 17. 4. Testing • Experience of responding to the first instrument may influence subject responses to the second instrument 5. Mortality • Loss of subjects may make a relationship more (or less) likely in the remaining data
  • 18. EVALUATING THREATS TO INTERNAL VALIDITY • Follows a procedure similar to the experimental research. 1. Subject Characteristics • Four of many possible characteristics a. Severity of disability b. Socioeconomic level of parents c. Physical strength and coordination d. Physical appearance
  • 19. 2. Mortality • Loss of subjects can be expected to reduce magnitude of correlation 3. Location • Threats could be controlled by independently assessing the job-site environments.
  • 20. 4. Instrumentation • Instrument decay; observations should scheduled • Data collector characteristics; interaction of data collectors and supervisors is a necessary parts • Data collector bias; observers should have no knowledge of job ratings