Presentation is loading. Please wait.

Presentation is loading. Please wait.

Bivariate Linear Regression. Linear Function Y = a + bX +e.

Similar presentations


Presentation on theme: "Bivariate Linear Regression. Linear Function Y = a + bX +e."— Presentation transcript:

1 Bivariate Linear Regression

2 Linear Function Y = a + bX +e

3 Sources of Error Error in the measurement of X and or Y or in the manipulation of X. The influence upon Y of variables other than X (extraneous variables), including variables that interact with X. Any nonlinear influence of X upon Y.

4 The Regression Line r 2 < 1  Predicted Y regresses towards mean Y Least Squares Criterion:

5 Our Beer and Burger Data

6 Pearson r is a Standardized Slope Pearson r is the number of standard deviations that predicted Y changes for each one standard deviation change in X.

7 Error Variance What is SSE if r = 0? If r 2 > 0, we can do better than just predicting that Y i is mean Y.

8 Standard Error of Estimate Get back to the original units of measurement.

9 Regression Variance Variance in Y “due to” X p is number of predictors. p = 1 for bivariate regression.

10 Coefficient of Determination The proportion of variance in Y explained by the linear model.

11 Coefficient of Alienation The proportion of variance in Y that is not explained by the linear model.

12 Testing Hypotheses H  : b = 0 F = t 2 One-tailed p from F = two-tailed p from t

13 Source Table MS total is nothing more than the sample variance of the dependent variable Y. It is usually omitted from the table.

14 Power Analysis Using Steiger & Fouladi’s R2.exe

15 Power = 13%

16 G*Power = 15%

17 Summary Statement The linear regression between my friends’ burger consumption and their beer consumption fell short of statistical significance, r =.8, beers = 1.2 + 1.6 burgers, F(1, 3) = 5.33, p =.10. The most likely explanation of the nonsiginficant result is that it represents a Type II error. Given our small sample size (N = 5), power was only 13% even for a large effect (ρ =.5).

18 The Regression Line is Similar to a Mean

19 Increase n to 10 Same value of F r 2 = SS regression  SS total, = 25.6/64.0 =.4 (down from.64).

20 Power Analysis

21 Power = 33%

22 G*Power = 36%

23 Increase n to 10 A.05 criterion of statistical significant was employed for all tests. An a priori power analysis indicated that my sample size (N = 10) would yield power of only 33% even for a large effect (ρ =.5). Despite this low power, the analysis yielded a statistically significant result. Among my friends, beer consumption increased significantly with burger consumption, r =.632, beers = 1.2 + 1.6 burgers, F(1, 8) = 5.33, p =.05.

24 Testing Directional Hypotheses H  : b  0H 1 : b > 0 For F, one-tailed p =.05 half-tailed p =.025. P(A  B) = P(A)P(B) =.5(.05) =.025

25 Assumptions To test H  : b = 0 or construct a CI Homoscedasticity across Y|X Normality of Y|X Normality of Y ignoring X No assumptions about X No assumptions for descriptive statistics (not using t or F)

26 Placing Confidence Limits on Predicted Values of Mean Y|X To predict the mean value of Y for all subjects who have some particular score on X:

27 Placing Confidence Limits on Predicted Values of Individual Y|X

28 Bowed Confidence Intervals

29 Testing Other Hypotheses Is the correlation between X and Y the same in one population as in another? Is the slope for predicting Y from X the same in one population as in another? Is the intercept for predicting Y from X the same in one population as in another.

30 Can differ on r but not slope or slope but not r.


Download ppt "Bivariate Linear Regression. Linear Function Y = a + bX +e."

Similar presentations


Ads by Google