Presentation is loading. Please wait.

Presentation is loading. Please wait.

3 4 Chapter Describing the Relation between Two Variables

Similar presentations


Presentation on theme: "3 4 Chapter Describing the Relation between Two Variables"— Presentation transcript:

1 3 4 Chapter Describing the Relation between Two Variables
© 2010 Pearson Prentice Hall. All rights reserved

2 Section 4.1 Scatter Diagrams and Correlation
© 2010 Pearson Prentice Hall. All rights reserved

3 © 2010 Pearson Prentice Hall. All rights reserved
4-3

4 © 2010 Pearson Prentice Hall. All rights reserved

5 © 2010 Pearson Prentice Hall. All rights reserved
4-5

6 © 2010 Pearson Prentice Hall. All rights reserved
EXAMPLE Drawing and Interpreting a Scatter Diagram The data shown to the right are based on a study for drilling rock. The researchers wanted to determine whether the time it takes to dry drill a distance of 5 feet in rock increases with the depth at which the drilling begins. So, depth at which drilling begins is the explanatory variable, x, and time (in minutes) to drill five feet is the response variable, y. Draw a scatter diagram of the data. Source: Penner, R., and Watts, D.G. “Mining Information.” The American Statistician, Vol. 45, No. 1, Feb. 1991, p. 6. © 2010 Pearson Prentice Hall. All rights reserved

7 © 2010 Pearson Prentice Hall. All rights reserved

8 Various Types of Relations in a Scatter Diagram
© 2010 Pearson Prentice Hall. All rights reserved

9 © 2010 Pearson Prentice Hall. All rights reserved

10 © 2010 Pearson Prentice Hall. All rights reserved

11 © 2010 Pearson Prentice Hall. All rights reserved

12 © 2010 Pearson Prentice Hall. All rights reserved

13 © 2010 Pearson Prentice Hall. All rights reserved

14 © 2010 Pearson Prentice Hall. All rights reserved

15 © 2010 Pearson Prentice Hall. All rights reserved
EXAMPLE Determining the Linear Correlation Coefficient Determine the linear correlation coefficient of the drilling data. © 2010 Pearson Prentice Hall. All rights reserved

16 © 2010 Pearson Prentice Hall. All rights reserved
© 2010 Pearson Prentice Hall. All rights reserved

17 © 2010 Pearson Prentice Hall. All rights reserved
17

18 © 2010 Pearson Prentice Hall. All rights reserved
18

19 © 2010 Pearson Prentice Hall. All rights reserved
19

20 © 2010 Pearson Prentice Hall. All rights reserved
EXAMPLE Does a Linear Relation Exist? Determine whether a linear relation exists between time to drill five feet and depth at which drilling begins. Comment on the type of relation that appears to exist between time to drill five feet and depth at which drilling begins. The correlation between drilling depth and time to drill is The critical value for n = 12 observations is Since > 0.576, there is a positive linear relation between time to drill five feet and depth at which drilling begins. © 2010 Pearson Prentice Hall. All rights reserved 20

21 © 2010 Pearson Prentice Hall. All rights reserved
21

22 © 2010 Pearson Prentice Hall. All rights reserved
According to data obtained from the Statistical Abstract of the United States, the correlation between the percentage of the female population with a bachelor’s degree and the percentage of births to unmarried mothers since 1990 is Does this mean that a higher percentage of females with bachelor’s degrees causes a higher percentage of births to unmarried mothers? Certainly not! The correlation exists only because both percentages have been increasing since It is this relation that causes the high correlation. In general, time series data (data collected over time) will have high correlations because each variable is moving in a specific direction over time (both going up or down over time; one increasing, while the other is decreasing over time). When data are observational, we cannot claim a causal relation exists between two variables. We can only claim causality when the data are collected through a designed experiment. © 2010 Pearson Prentice Hall. All rights reserved 22

23 © 2010 Pearson Prentice Hall. All rights reserved
Another way that two variables can be related even though there is not a causal relation is through a lurking variable. A lurking variable is related to both the explanatory and response variable. For example, ice cream sales and crime rates have a very high correlation. Does this mean that local governments should shut down all ice cream shops? No! The lurking variable is temperature. As air temperatures rise, both ice cream sales and crime rates rise. © 2010 Pearson Prentice Hall. All rights reserved

24 © 2010 Pearson Prentice Hall. All rights reserved
24

25 © 2010 Pearson Prentice Hall. All rights reserved
This study is a prospective cohort study, which is an observational study. Therefore, the researchers cannot claim that increased cola consumption causes a decrease in bone mineral density. Some lurking variables in the study that could confound the results are: body mass index height smoking alcohol consumption calcium intake physical activity © 2010 Pearson Prentice Hall. All rights reserved

26 Section 4.2 Least-squares Regression
© 2010 Pearson Prentice Hall. All rights reserved 26

27 © 2010 Pearson Prentice Hall. All rights reserved
EXAMPLE Finding an Equation the Describes Linearly Related Data Using the following sample data: (a) Find a linear equation that relates x (the explanatory variable) and y (the response variable) by selecting two points and finding the equation of the line containing the points. Using (2, 5.7) and (6, 1.9): © 2010 Pearson Prentice Hall. All rights reserved 27

28 © 2010 Pearson Prentice Hall. All rights reserved
(b) Graph the equation on the scatter diagram. (c) Use the equation to predict y if x = 3. © 2010 Pearson Prentice Hall. All rights reserved 4-28

29 © 2010 Pearson Prentice Hall. All rights reserved
4-29

30 © 2010 Pearson Prentice Hall. All rights reserved
The difference between the observed value of y and the predicted value of y is the error, or residual. Using the line from the last example, and the predicted value at x = 3: residual = observed y – predicted y = 5.2 – 4.75 = 0.45 (3, 5.2) } residual = observed y – predicted y = 5.2 – 4.75 = 0.45 © 2010 Pearson Prentice Hall. All rights reserved 4-30

31 © 2010 Pearson Prentice Hall. All rights reserved
4-31

32 © 2010 Pearson Prentice Hall. All rights reserved
4-32

33 © 2010 Pearson Prentice Hall. All rights reserved
EXAMPLE Finding the Least-squares Regression Line Using the drilling data Find the least-squares regression line. Predict the drilling time if drilling starts at 130 feet. Is the observed drilling time at 130 feet above, or below, average. Draw the least-squares regression line on the scatter diagram of the data. © 2010 Pearson Prentice Hall. All rights reserved 4-33

34 © 2010 Pearson Prentice Hall. All rights reserved
We agree to round the estimates of the slope and intercept to four decimal places. (b) (c) The observed drilling time is 6.93 seconds. The predicted drilling time is seconds. The drilling time of 6.93 seconds is below average. © 2010 Pearson Prentice Hall. All rights reserved 4-34

35 © 2010 Pearson Prentice Hall. All rights reserved
4-35

36 © 2010 Pearson Prentice Hall. All rights reserved
4-36

37 © 2010 Pearson Prentice Hall. All rights reserved
Interpretation of Slope: The slope of the regression line is For each additional foot of depth we start drilling, the time to drill five feet increases by minutes, on average. Interpretation of the y-Intercept: The y-intercept of the regression line is To interpret the y-intercept, we must first ask two questions: 1. Is 0 a reasonable value for the explanatory variable? 2. Do any observations near x = 0 exist in the data set? A value of 0 is reasonable for the drilling data (this indicates that drilling begins at the surface of Earth. The smallest observation in the data set is x = 35 feet, which is reasonably close to 0. So, interpretation of the y-intercept is reasonable. The time to drill five feet when we begin drilling at the surface of Earth is minutes. © 2010 Pearson Prentice Hall. All rights reserved 4-37

38 © 2010 Pearson Prentice Hall. All rights reserved
If the least-squares regression line is used to make predictions based on values of the explanatory variable that are much larger or much smaller than the observed values, we say the researcher is working outside the scope of the model. Never use a least-squares regression line to make predictions outside the scope of the model because we can’t be sure the linear relation continues to exist. © 2010 Pearson Prentice Hall. All rights reserved 4-38

39 © 2010 Pearson Prentice Hall. All rights reserved
Section Diagnostics on the Least-squares Regression Line © 2010 Pearson Prentice Hall. All rights reserved 4-39

40 © 2010 Pearson Prentice Hall. All rights reserved
4-40

41 © 2010 Pearson Prentice Hall. All rights reserved
The coefficient of determination, R2, measures the proportion of total variation in the response variable that is explained by the least-squares regression line. The coefficient of determination is a number between 0 and 1, inclusive. That is, 0 < R2 < 1. If R2 = 0 the line has no explanatory value If R2 = 1 means the line variable explains 100% of the variation in the response variable. © 2010 Pearson Prentice Hall. All rights reserved 4-41

42 © 2010 Pearson Prentice Hall. All rights reserved
The data to the right are based on a study for drilling rock. The researchers wanted to determine whether the time it takes to dry drill a distance of 5 feet in rock increases with the depth at which the drilling begins. So, depth at which drilling begins is the predictor variable, x, and time (in minutes) to drill five feet is the response variable, y. Source: Penner, R., and Watts, D.G. “Mining Information.” The American Statistician, Vol. 45, No. 1, Feb. 1991, p. 6. © 2010 Pearson Prentice Hall. All rights reserved 4-42

43 © 2010 Pearson Prentice Hall. All rights reserved

44 © 2010 Pearson Prentice Hall. All rights reserved
Sample Statistics Mean Standard Deviation Depth Time Correlation Between Depth and Time: 0.773 Regression Analysis The regression equation is Time = Depth © 2010 Pearson Prentice Hall. All rights reserved

45 © 2010 Pearson Prentice Hall. All rights reserved
Suppose we were asked to predict the time to drill an additional 5 feet, but we did not know the current depth of the drill. What would be our best “guess”? © 2010 Pearson Prentice Hall. All rights reserved

46 © 2010 Pearson Prentice Hall. All rights reserved
Suppose we were asked to predict the time to drill an additional 5 feet, but we did not know the current depth of the drill. What would be our best “guess”? ANSWER: The mean time to drill an additional 5 feet: minutes © 2010 Pearson Prentice Hall. All rights reserved

47 © 2010 Pearson Prentice Hall. All rights reserved
Now suppose that we are asked to predict the time to drill an additional 5 feet if the current depth of the drill is 160 feet? ANSWER: Our “guess” increased from 6.99 minutes to 7.39 minutes based on the knowledge that drill depth is positively associated with drill time. © 2010 Pearson Prentice Hall. All rights reserved

48 © 2010 Pearson Prentice Hall. All rights reserved

49 © 2010 Pearson Prentice Hall. All rights reserved
The difference between the observed value of the response variable and the mean value of the response variable is called the total deviation and is equal to © 2010 Pearson Prentice Hall. All rights reserved

50 © 2010 Pearson Prentice Hall. All rights reserved
The difference between the predicted value of the response variable and the mean value of the response variable is called the explained deviation and is equal to © 2010 Pearson Prentice Hall. All rights reserved

51 © 2010 Pearson Prentice Hall. All rights reserved
The difference between the observed value of the response variable and the predicted value of the response variable is called the unexplained deviation and is equal to © 2010 Pearson Prentice Hall. All rights reserved

52 © 2010 Pearson Prentice Hall. All rights reserved

53 © 2010 Pearson Prentice Hall. All rights reserved
Total Variation = Unexplained Variation + Explained Variation © 2010 Pearson Prentice Hall. All rights reserved

54 © 2010 Pearson Prentice Hall. All rights reserved
Total Variation = Unexplained Variation + Explained Variation Unexplained Variation Explained Variation 1 = + Total Variation Total Variation Explained Variation Unexplained Variation = 1 – Total Variation Total Variation © 2010 Pearson Prentice Hall. All rights reserved

55 © 2010 Pearson Prentice Hall. All rights reserved
To determine R2 for the linear regression model simply square the value of the linear correlation coefficient. © 2010 Pearson Prentice Hall. All rights reserved

56 © 2010 Pearson Prentice Hall. All rights reserved
EXAMPLE Determining the Coefficient of Determination Find and interpret the coefficient of determination for the drilling data. Because the linear correlation coefficient, r, is 0.773, we have that R2 = = = 59.75%. So, 59.75% of the variability in drilling time is explained by the least-squares regression line. © 2010 Pearson Prentice Hall. All rights reserved

57 © 2010 Pearson Prentice Hall. All rights reserved
Draw a scatter diagram for each of these data sets. For each data set, the variance of y is © 2010 Pearson Prentice Hall. All rights reserved

58 © 2010 Pearson Prentice Hall. All rights reserved
Data Set A Data Set B Data Set C © 2010 Pearson Prentice Hall. All rights reserved

59 © 2010 Pearson Prentice Hall. All rights reserved

60 © 2010 Pearson Prentice Hall. All rights reserved
Residuals play an important role in determining the adequacy of the linear model. In fact, residuals can be used for the following purposes: To determine whether a linear model is appropriate to describe the relation between the predictor and response variables. To determine whether the variance of the residuals is constant. To check for outliers. © 2010 Pearson Prentice Hall. All rights reserved

61 © 2010 Pearson Prentice Hall. All rights reserved
If a plot of the residuals against the predictor variable shows a discernable pattern, such as curved, then the response and predictor variable may not be linearly related. © 2010 Pearson Prentice Hall. All rights reserved

62 © 2010 Pearson Prentice Hall. All rights reserved

63 © 2010 Pearson Prentice Hall. All rights reserved
A chemist as a 1000-gram sample of a radioactive material. She records the amount of radioactive material remaining in the sample every day for a week and obtains the following data. Day Weight (in grams) © 2010 Pearson Prentice Hall. All rights reserved

64 © 2010 Pearson Prentice Hall. All rights reserved
Linear correlation coefficient: © 2010 Pearson Prentice Hall. All rights reserved

65 © 2010 Pearson Prentice Hall. All rights reserved

66 © 2010 Pearson Prentice Hall. All rights reserved
Linear model not appropriate © 2010 Pearson Prentice Hall. All rights reserved

67 © 2010 Pearson Prentice Hall. All rights reserved
If a plot of the residuals against the explanatory variable shows the spread of the residuals increasing or decreasing as the explanatory variable increases, then a strict requirement of the linear model is violated. This requirement is called constant error variance. The statistical term for constant error variance is homoscedasticity © 2010 Pearson Prentice Hall. All rights reserved

68 © 2010 Pearson Prentice Hall. All rights reserved

69 © 2010 Pearson Prentice Hall. All rights reserved
A plot of residuals against the explanatory variable may also reveal outliers. These values will be easy to identify because the residual will lie far from the rest of the plot. © 2010 Pearson Prentice Hall. All rights reserved

70 © 2010 Pearson Prentice Hall. All rights reserved

71 © 2010 Pearson Prentice Hall. All rights reserved
EXAMPLE Residual Analysis Draw a residual plot of the drilling time data. Comment on the appropriateness of the linear least-squares regression model. © 2010 Pearson Prentice Hall. All rights reserved

72 © 2010 Pearson Prentice Hall. All rights reserved

73 © 2010 Pearson Prentice Hall. All rights reserved
Boxplot of Residuals for the Drilling Data © 2010 Pearson Prentice Hall. All rights reserved

74 © 2010 Pearson Prentice Hall. All rights reserved

75 © 2010 Pearson Prentice Hall. All rights reserved
An influential observation is one that has a disproportionate affect on the value of the slope and y-intercept in the least-squares regression equation. © 2010 Pearson Prentice Hall. All rights reserved

76 © 2010 Pearson Prentice Hall. All rights reserved
Explanatory, x Influential observations typically exist when the point is large relative to its X value. So, Case 3 is likely influential. © 2010 Pearson Prentice Hall. All rights reserved

77 © 2010 Pearson Prentice Hall. All rights reserved
EXAMPLE Influential Observations Suppose an additional data point is added to the drilling data. At a depth of 300 feet, it took minutes to drill 5 feet. Is this point influential? © 2010 Pearson Prentice Hall. All rights reserved

78 © 2010 Pearson Prentice Hall. All rights reserved

79 © 2010 Pearson Prentice Hall. All rights reserved
With influential Without influential © 2010 Pearson Prentice Hall. All rights reserved

80 © 2010 Pearson Prentice Hall. All rights reserved
As with outliers, influential observations should be removed only if there is justification to do so. When an influential observation occurs in a data set and its removal is not warranted, there are two courses of action: (1) Collect more data so that additional points near the influential observation are obtained, or (2) Use techniques that reduce the influence of the influential observation (such as a transformation or different method of estimation - e.g. minimize absolute deviations). © 2010 Pearson Prentice Hall. All rights reserved


Download ppt "3 4 Chapter Describing the Relation between Two Variables"

Similar presentations


Ads by Google