Correlation Research
Basic design of correlational research
- Not complicated - Scores for 2 or more variables - Results are expressed as a correlation coefficient that indicated the relation between variables - Can be in the form of relationship studies or prediction studies
How do you analyze and interpret the correlation coefficient?
-Determine the correlation coefficient -A decimal ranging from +1 to -1 -Closer to +1 = positive correlation -Closer to -1 = negative correlation -Closer to 0 = no correlation
Key characteristics of correlational research
-Need a sample size of at least 30 -Variables can be scored -Allows researcher to determine whether and to what degree variables are related -Does not establish casual relationship
Steps in the correlational research process
1) Problem selection 2) Participant and Sample selection 3) Procedure 4) Data analysis and Interpretation
Spearman Rho
Appropriate if the data for at least one variable are expressed as rank or ordinal. - Both variables must be a rank
Pearson R
Appropriate when both variables to be correlated are expressed as continuous data (ratio, interval) - Achievement, personality measures
Correlation does not equal causation
Correlation does not prove that one variable causes the other - only that they have a positive/negative relationship
Correlational research
Involves collecting data to determine to what degree a relationship exists between two quantifiable variables.
Statistical significance
Probability that you could have gotten the results by chance.
Common variance
The extent to which variables vary in a SYSTEMATIC way. (as one goes up, the other goes up, Rise/Run)