How well does the line describe the data? What is the mileage that you would expect a 4000-pound car to have?

Algebra & Trigonometry with Analytic Geometry
13th Edition
ISBN:9781133382119
Author:Swokowski
Publisher:Swokowski
Chapter4: Polynomial And Rational Functions
Section4.6: Variation
Problem 37E
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How well does the line describe the data? What is the mileage that you would expect a 4000-pound car to have?
Chart 1
A
В
C
F
20 Jeep Liberty
21 Hyundai Santa Fe Base
22 Buick Le Sabre Custom
23 Pontiac Bonneville
24 Toyota Avalon
4115
21
3574
27
3567
29
3633
29
3417
29
25 Toyota Celica GT
26 Hummer H2
2460
33
6400
17
27
28
Weight Mileage
29
400
30
31
32
33
34
35
36
37
38
3. Car Wgt-Mileage - Regression Sheet1
39
2. FL House Prices -Descriptive
1. Cones - Histogram
O Type here to search
Chp
B.
Transcribed Image Text:Chart 1 A В C F 20 Jeep Liberty 21 Hyundai Santa Fe Base 22 Buick Le Sabre Custom 23 Pontiac Bonneville 24 Toyota Avalon 4115 21 3574 27 3567 29 3633 29 3417 29 25 Toyota Celica GT 26 Hummer H2 2460 33 6400 17 27 28 Weight Mileage 29 400 30 31 32 33 34 35 36 37 38 3. Car Wgt-Mileage - Regression Sheet1 39 2. FL House Prices -Descriptive 1. Cones - Histogram O Type here to search Chp B.
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Save a Copy
Chart 1
fr
B C
E
F
G
1 model
2 Honda Accord Sedan LX
3 Toyota Corolla
4 Toyota Sequoia Limited 4WD
5 Mitsubishi Eclipse RS
6 Hyundai Tiburon Base
7 Ford Freestar Wagon SE
8 Dodge Grand Caravan XFWD
9 Toyota Sienna XLE FWD
10 Chevrolet Colorado Extended Cab 2WD
11 Dodge Dakota Club Cab
12 Chevrolet Trail Blazer
weight mileage
3164
Car Weight vs Mileage
34
2590
38
40
5295
17
35
2976
31
2997
30
30
4275
23
25
4218
25
4165
27
20
3631
24
E 15
3838
22
y = -0.0052x + 45.645
10
R? = 0.751
4612
21
21
13 Jeep Grand Cherokee Laredo
14 Dodge Durango ST
15 Ford Expedition Eddie Bauer
3970
5
4981
18
5671
17
3000
4000
5000
6000
7000
1000
2000
5050
18
Wieght of Car (Pounds)
16 Chevrolet Tahoe 4WD
5262
18
17 GMC Yukon 4WD
18 Ford Thunderbird Premium
19 Mercedes-Benz SLR
20 Jeep Liberty
3863
23
3220
22
4115
21
2. FL House Prices -Descriptive
3. Car Wgt-Mileage - Regression Sheet1 . O
1. Cones - Histogram
822 PM
2/18/2021
e Type here to search
hp
立
Mileage (MPG)
Transcribed Image Text:Comme Calibri (Body) 10 A A == | 戰曼 General insert Σ Paste BIU E $- % 9 898 Conditional Fomat as Cell Delete Formatting Tabile Styles Sort & Find & Fiher Select- EFormat 4. Clipboard Font Alignment Number Styles Cells Editing deas Sens UPLOAD BLOCKED We couldn't verify you have the necessary permissions to upload the file. Save a Copy Chart 1 fr B C E F G 1 model 2 Honda Accord Sedan LX 3 Toyota Corolla 4 Toyota Sequoia Limited 4WD 5 Mitsubishi Eclipse RS 6 Hyundai Tiburon Base 7 Ford Freestar Wagon SE 8 Dodge Grand Caravan XFWD 9 Toyota Sienna XLE FWD 10 Chevrolet Colorado Extended Cab 2WD 11 Dodge Dakota Club Cab 12 Chevrolet Trail Blazer weight mileage 3164 Car Weight vs Mileage 34 2590 38 40 5295 17 35 2976 31 2997 30 30 4275 23 25 4218 25 4165 27 20 3631 24 E 15 3838 22 y = -0.0052x + 45.645 10 R? = 0.751 4612 21 21 13 Jeep Grand Cherokee Laredo 14 Dodge Durango ST 15 Ford Expedition Eddie Bauer 3970 5 4981 18 5671 17 3000 4000 5000 6000 7000 1000 2000 5050 18 Wieght of Car (Pounds) 16 Chevrolet Tahoe 4WD 5262 18 17 GMC Yukon 4WD 18 Ford Thunderbird Premium 19 Mercedes-Benz SLR 20 Jeep Liberty 3863 23 3220 22 4115 21 2. FL House Prices -Descriptive 3. Car Wgt-Mileage - Regression Sheet1 . O 1. Cones - Histogram 822 PM 2/18/2021 e Type here to search hp 立 Mileage (MPG)
Expert Solution
Step 1

From the Scatter plot:

Regression equation is y=-0.0052x+45.645

where, intercept a=45.645 and slope b=-0.0052

R-squared value is 0.751.

Regression line best fits the data if the differences between the observations and the predicted values are small and unbiased (fitted values are not too high or too low).

R-squared is also called Coefficient of Determination. R-squared value represents smaller differences between the observed data values and the fitted values. It explains the variation in the dependent variables with respect to the change in the independent variables.

Since, R2=0.751, we can say that the regression model best fits the data. In other words, 75% of variation in Y is explained by the variation in X.

Larger the R-squared value, better the regression model fits the data.

And since the slope of the line is downwards, there appears to be a negative linear correlation between the two variables. All the data points are closer to the line. So, there are no outliers.

 

 

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