1 / 35

CORRELATION

CORRELATION. Overview of Correlation. What is a Correlation? Correlation Coefficients Coefficient of Determination Test for Significance Correlation and Causality Partial and Part Correlations. What is a Correlation?. Degree of linear relationship between variables

pules
Download Presentation

CORRELATION

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. CORRELATION

  2. Overview of Correlation • What is a Correlation? • Correlation Coefficients • Coefficient of Determination • Test for Significance • Correlation and Causality • Partial and Part Correlations

  3. What is a Correlation? • Degree of linear relationship between variables • Each individual is measured on both variables

  4. What is a Correlation? • Comparison of the way scores deviate from their means on the two variables • Standardized covariance

  5. Cross-Product Deviation • Find the difference between each person’s scores and the mean of the variable (deviation). • For each person, multiply the two deviations together. • Do the deviations tend to go in the same direction?

  6. Covariance • Add up all the cross-product deviations and average them. • The more covariance, the more the two variables go together, or co-vary. • Covariance is not standardized, so it’s hard to interpret.

  7. Pearson r • Standardized covariance • Used for two interval/ratio variables • Varies from -1 to +1

  8. Pearson r • Absolute value indicates strength of relationship • .1 - small • .3 - medium • .5 - large

  9. Pearson r • Sign indicates direction of correlation • Positive: increases on one variable correspond to increases on the other variable • Negative: increases on one variable correspond to decreases on the other variable

  10. Other Correlation Coefficients • Ordinal variables • Spearman rho or Kendall’s tau • Dichotomous variable with interval/ratio variable • Point biserial r (discrete dichotomy) • Biserial r (continuous dichotomy)

  11. Other Correlation Coefficients • Two dichotomous variables • Phi coefficient

  12. About Dichotomous Variables • Dichotomous variables are usually at the nominal level. • Numbers are assigned to the two categories in an arbitrary way. • The way the numbers are assigned determines the sign of the correlation coefficient.

  13. Review Question! How is covariance related to the correlation coefficient?

  14. Coefficient of Determination • Measures proportion of explained variance in Y based on X • r2

  15. Testing r for Significance • Null hypothesis is usually that r is zero in the population. • One tailed vs. two-tailed

  16. Assumptions • Appropriate types of data • Independent observations • Normal distributions • Linear relationship

  17. Example APA format The Pearson r was computed between rated enjoyment of frog legs and level of neuroticism. The correlation was statistically significant, r(58) = .28, p = .03.

  18. Review Question If r = .28, then r2 = .08. What does the .08 represent?

  19. Review Question! If p = .03, what probability does the .03 represent? There is a 3% chance of…..?

  20. Correlation and Causality • A correlation by itself does not show that one variable causes the other. • A correlation may be consistent with a causal relationship.

  21. The Third Variable Problem • A correlation between X and Y could be caused by a third variable influencing both X and Y.

  22. The Directionality Problem • A correlation between X and Y could be a result of X causing Y or Y causing X.

  23. Partial Correlation • Used to “partial out” the effects of a third variable (X2) on the relationship between X1 and Y • Correlation between X1 and Y with the influence of X2 removed from both X1 and Y

  24. Partial r2 X1 Y X2

  25. Interpreting Partial Correlations • Compare the simple bivariate correlation to the partial correlation. • If the partial correlation is lower, it suggests that X2 is mediating the relationship between X1 and Y.

  26. Part Correlation • Also called: semi-partial correlation • Correlation between X1 and Y with the influence of X2 (and other predictor variables) removed from just X1 • Indicates amount of unique variance in Y explained by X1 • Used in Multiple Regression Analysis

  27. Part r2 X1 Y X2

  28. Partial r2 X1 Y X2

  29. Choosing Stats Patrons at a bar are randomly assigned to one of three information conditions. In one condition, they taste a beer without being given any information about it. In a second condition, they are told that it is an inexpensive brand of beer. In a third condition, they are told that it is an expensive brand of beer. Their ratings of the taste quality are compared across the three conditions.

More Related