1 / 18

LINEAR REGRESSION: What it Is and How it Works

LINEAR REGRESSION: What it Is and How it Works. Overview. What is Bivariate Linear Regression ? The Regression Equation How It’s Based on r Assumptions. What is Bivariate Linear Regression ?. Predict future scores on Y based on measured scores on X

waneta
Télécharger la présentation

LINEAR REGRESSION: What it Is and How it Works

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. LINEAR REGRESSION:What it Is and How it Works

  2. Overview • What is BivariateLinear Regression? • The Regression Equation • How It’s Based on r • Assumptions

  3. What is BivariateLinear Regression? • Predict future scores on Y based on measured scores on X • Predictions are based on a correlation from a sample where both X and Y were measured

  4. Why is it Bivariate? • Two variables: X and Y • X - independent variable/predictor variable • Y - dependent/outcome/criterion variable

  5. Why is it Linear? • Based on the linear relationship (correlation) between X and Y • The relationship can be described by the equation for a straight line

  6. The Regression Equation y = b1xi+ b0 + ei y = predicted score on criterion variable b0 = intercept xi = measured score on predictor variable b1 = slope ei = residual (error score)

  7. Regression Lines

  8. Least-Squares Solution • Minimize squared error in prediction. • Error (residual) = difference between predicted y and actual y

  9. Residuals

  10. How It’s Based on r Replace x and y with zX and zY: zY = b1zX + bo and the y-intercept becomes 0: zY = b1zX and the slope becomes r: zY = rzX

  11. Assumptions for Bivariate Linear Regression • Quantitative data (or dichotomous) • Independent observations • Predict for same population that was sampled

  12. Assumptions for Bivariate Linear Regression • Linear relationship • Examine scatterplot • Homoscedasticity – equal spread of residuals at different values of predictor • Examine ZRESID vs ZPRED plot

  13. Checking for Homoscedasticity

  14. Assumptions for Bivariate Linear Regression • Independent errors • Durbin Watson should be close to 2 • Normality of errors • Examine frequency distribution of residuals

  15. Checking for Normality of Errors

  16. Influential Cases • Influential cases have greater impact on the slope and y-intercept • Select casewise diagnostics and look for cases with large residuals

  17. Choosing Stats Participants are asked to pretend that they are jurors and, after watching a videotape of a defendant being questioned, indicate whether they think the defendant is guilty or not. The defendants are either African American or Caucasian. The researcher hypothesizes that participants will be more likely to think the African American defendants are guilty as compared to Caucasians.

More Related