1 / 19

Introduction to Behavioral Statistics

Introduction to Behavioral Statistics. Correlation & Regression. Correlation. Introduction to Correlation & Regression We often see things that are related to one another. height/weight IQ/Performance in School Age/Income We call this relationship Correlation

stevethomas
Download Presentation

Introduction to Behavioral Statistics

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. Introduction to Behavioral Statistics Correlation & Regression

  2. Correlation • Introduction to Correlation & Regression • We often see things that are related to one another. • height/weight • IQ/Performance in School • Age/Income • We call this relationship Correlation • Pearson r is the most common method of measuring relationship.

  3. Correlation • Formula for calculating Pearson’s r • Let x and y be two sets of paired observations with standard deviations = sx and sy • How might we measure relationship between two sets of scores?

  4. Correlation How might we measure relationship between two sets of scores?

  5. Correlation • Is this a good measure of relationship? • It does give different values for different degrees of relationship. • It does not provide consistency which allows it to be interpreted. • Every set of scores will yield a different score • The result will vary with the size of the scores. • How can we equalize these scores so they will give consistent and meaningful results every time?

  6. Correlation • How can we equalize these scores so they will give consistent and meaningful results every time? • We can change the scores to standard scores and take the average product of the standard scores for the X and Y variables.

  7. Correlation

  8. Correlation • This is called the standard score formula. • It is a defining formula • It is not a formula that you would use to actually calculate the correlation coefficient. • We call this the Pearson Product Moment r

  9. Pearson Product Moment Correlation Coefficient • The most widely used method of measuring correlation is the Pearson Product MomentCorrelation. • We will also consider a Rank Order Correlation Coefficient • It is an Ordinal Level Correlation Method • Spearman Rank Order Correlation • Limits for Correlation are -1 0 +1

  10. Pearson Product Moment Correlation Coefficient Calculating Pearson’s Product Moment r

  11. Pearson Product Moment Correlation Coefficient Example Illustrating Computation of Pearson’s r

  12. Pearson Product Moment Correlation Coefficient Calculating Pearson’s Product Moment r

  13. Pearson Product Moment r

  14. Pearson Product Moment r • Computation of r from raw scores

  15. Pearson Product Moment r Computation of r from raw scores

  16. Spearman Rank Difference Correlation (Rho)(D) • Rho • We sometimes have data we want to correlate which doesn’t meet the requirements for a Pearson r. • Not at Interval Level • Rho is a correlation technique that requires only ordinal level of measurement.

  17. Spearman Rank Difference Correlation (Rho)(D)

  18. Spearman Rank Difference Correlation (Rho) • Advantages and Disadvantages of Rho • Advantages: • Ease of Computation • Skewness influences r but not Rho • Disadvantages: • It is somewhat less consistent from sample to sample.

  19. Spearman Rank Difference Correlation (Rho) Next We will focus on interpreting a correlation coefficient and regression. Press Here to Return to CLASS PAGE

More Related