920 likes | 1.25k Views
The plan. Practice – Correlation A straight line A regression equation Practice! A quicker way to compute a correlation. Practice. Interpret the following: 1) The correlation between vocational-interest scores at age 20 and at age 40 was .70. 2) Age and IQ is correlated -.16.
E N D
The plan • Practice – Correlation • A straight line • A regression equation • Practice! • A quicker way to compute a correlation
Practice • Interpret the following: • 1) The correlation between vocational-interest scores at age 20 and at age 40 was .70. • 2) Age and IQ is correlated -.16. • 3) The correlation between IQ and family size is -.30. • 4) The correlation between sexual promiscuity and dominance is .32. • 5) In a sample of males happiness and height is correlated .11.
Sleeping and Happiness • You are interested in the relationship between hours slept and happiness. • 1) Make a scatter plot • 2) Guess the correlation • 3) Guess and draw the location of the regression line
. . . . .
Sleeping and Happiness • 4) Compute the correlation • Hours Slept M = 7.0 SD = 1.4 • Happiness M = 6.8 SD = 1.7
Blanched Formula r = XY = 247 X = 7.0 Y = 6.8 Sx = 1.4 Sy = 1.7 N = 5
Blanched Formula 247 r = XY = 247 X = 7.0 Y = 6.8 Sx = 1.4 Sy = 1.7 N = 5
Blanched Formula 247 7.0 6.8 r = XY = 247 X = 7.0 Y = 6.8 Sx = 1.4 Sy = 1.7 N = 5
Blanched Formula 247 7.0 6.8 5 .76 = 1.4 1.7 XY = 247 X = 7.0 Y = 6.8 Sx = 1.4 Sy = 1.7 N = 5
. . . . . r = .76
Remember this:Statistics Needed • Need to find the best place to draw the regression line on a scatter plot • Need to quantify the cluster of scores around this regression line (i.e., the correlation coefficient)
Regression allows us to predict! . . . . .
Straight Line Y = mX + b Where: Y and X are variables representing scores m = slope of the line (constant) b = intercept of the line with the Y axis (constant)
That’s nice but. . . . • How do you figure out the best values to use for m and b ? • First lets move into the language of regression
Straight Line Y = mX + b Where: Y and X are variables representing scores m = slope of the line (constant) b = intercept of the line with the Y axis (constant)
Regression Equation Y = a + bX Where: Y = value predicted from a particular X value a = point at which the regression line intersects the Y axis b = slope of the regression line X = X value for which you wish to predict a Y value
Practice • Y = -7 + 2X • What is the slope and the Y-intercept? • Determine the value of Y for each X: • X = 1, X = 3, X = 5, X = 10
Practice • Y = -7 + 2X • What is the slope and the Y-intercept? • Determine the value of Y for each X: • X = 1, X = 3, X = 5, X = 10 • Y = -5, Y = -1, Y = 3, Y = 13
Finding a and b • Uses the least squares method • Minimizes Error Error = Y - Y (Y - Y)2 is minimized
. . . . .
Error = Y - Y (Y - Y)2 is minimized . Error = 1 . Error = .5 . . Error = -1 . Error = 0 Error = -.5
Finding a and b • Ingredients • r value between the two variables • Sy and Sx • Mean of Y and X
b b = r = correlation between X and Y SY = standard deviation of Y SX = standard deviation of X
a a = Y - bX Y = mean of the Y scores b= regression coefficient computed previously X = mean of the X scores
Mean Y = 4.6; SY = 2.41 r = .88Mean X = 3.0; SX = 1.41 . . . . .
Mean Y = 4.6; SY = 2.41 r = .88Mean X = 3.0; SX = 1.41 2.41 b = .88 1.50 1.41
Mean Y = 4.6; SY = 2.41 r = .88Mean X = 3.0; SX = 1.41 b = 1.5 a = Y - bX
Mean Y = 4.6; SY = 2.41 r = .88Mean X = 3.0; SX = 1.41 b = 1.5 0.1 = 4.6 - (1.50)3.0
Regression Equation Y = a + bX Y = 0.1 + (1.5)X
Y = 0.1 + (1.5)X . . . . .
Y = 0.1 + (1.5)XX = 1; Y = 1.6 . . . . . .
Y = 0.1 + (1.5)XX = 5; Y = 7.60 . . . . . . .
Y = 0.1 + (1.5)X . . . . . . .
Mean Y = 14.50; Sy = 4.43Mean X = 6.00; Sx= 2.16 r = -.57 b =
Mean Y = 14.50; Sy = 4.43Mean X = 6.00; Sx= 2.16 r = -.57 4.43 b = -.57 -1.17 2.16
Mean Y = 14.50; Sy = 4.43Mean X = 6.00; Sx= 2.16 b = -1.17 a = Y - bX
Mean Y = 14.50; Sy = 4.43Mean X = 6.00; Sx= 2.16 b = -1.17 21.52= 14.50 - (-1.17)6.0
Regression Equation Y = a + bX Y = 21.52 + (-1.17)X
Y = 21.52 + (-1.17)X . 22 20 . 18 16 . 14 . 12 10
Y = 21.52 + (-1.17)X . . 22 20 . 18 16 . 14 . 12 10
Y = 21.52 + (-1.17)X . . 22 20 . 18 16 . 14 . . 12 10
Y = 21.52 + (-1.17)X . . 22 20 . 18 16 . 14 . . 12 10