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Chapter 5 LSRL.

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Presentation on theme: "Chapter 5 LSRL."— Presentation transcript:

1 Chapter 5 LSRL

2 Bivariate Data x: explanatory (independent) variable
y: response (dependent) variable Use x to predict y

3 Be sure to put the hat on the y!
– (y-hat) means predicted y-value b – slope the amount y increases when x increases by 1 unit a – y-intercept height of the line when x = 0 in some situations, y-intercept has no meaning Be sure to put the hat on the y!

4 Least Squares Regression Line (LSRL)
Line that gives the best fit to the data Minimizes the sum of the squared deviations from the line

5 (0,0) (3,10) (6,2) 4.5 -5 -4 (0,0) y =.5(6) + 4 = 7 2 – 7 = -5 y = 4
0 – 4 = -4 -5 y =.5(3) + 4 = 5.5 10 – 5.5 = 4.5 -4 (0,0) Sum of the squares = 61.25

6 What is the sum of the deviations from the line?
Use a calculator to find the line of best fit (0,0) (3,10) (6,2) Will it always be zero? 6 -3 The line that minimizes the sum of the squared deviations from the line is the LSRL -3 Sum of the squares = 54

7 Interpretations Slope:
For each unit increase in x, there is an approximate increase/decrease of b in y. Correlation coefficient: There is a strength, direction, linear relationship between x and y.

8 The ages (in months) and heights (in inches) of seven children are given.
Find the LSRL. Interpret the slope and correlation coefficient in the context of the problem.

9 Slope: For each increase of one month in age, there is an approximate increase of .34 inches in heights of children. Correlation coefficient: There is a strong, positive, linear relationship between the age and height of children.

10 Predict the height of a child who is 4.5 years old.
The ages (in months) and heights (in inches) of seven children are given. x y Predict the height of a child who is 4.5 years old. Predict the height of someone who is 20 years old. Graph, find lsrl, also examine mean of x & y

11 Extrapolation LSRL should not be used to predict y for x-values outside the data set We don’t know if the pattern in the scatterplot continues

12 This point is always on the LSRL
Age Ht Calculate x & y. Find the point (x, y) on the scatterplot. This point is always on the LSRL Graph, find lsrl, also examine mean of x & y

13  Both r and the LSRL are non-resistant measures

14 Formulas on green sheet

15 The following statistics are found for the variables posted speed limit and the average number of accidents. Find the LSRL & predict the number of accidents for a posted speed limit of 50 mph.


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