ELEMENTARY SATISTICS IA
13th Edition
ISBN: 9780137695522
Author: Triola
Publisher: PEARSON C
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Textbook Question
Chapter 2.4, Problem 11BSC
Linear
11. Using the data from Exercise 7 “Car Weight and Fuel Consumption.” the linear correlation coefficient is r = −0.987.
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ons
12. A sociologist hypothesizes that the crime rate is higher in areas
with higher poverty rate and lower median income. She col-
lects data on the crime rate (crimes per 100,000 residents),
the poverty rate (in %), and the median income (in $1,000s)
from 41 New England cities. A portion of the regression results
is shown in the following table.
Standard
Coefficients
error
t stat
p-value
Intercept
-301.62
549.71
-0.55 0.5864
Poverty
53.16
14.22
3.74 0.0006
Income
4.95
8.26
0.60 0.5526
a.
b.
Are the signs as expected on the slope coefficients?
Predict the crime rate in an area with a poverty rate of
20% and a median income of $50,000.
3. Using data from 50 work
2. The owner of several used-car dealerships believes that the
selling price of a used car can best be predicted using the car's
age. He uses data on the recent selling price (in $) and age of
20 used sedans to estimate Price = Po + B₁Age + ε. A portion
of the regression results is shown in the accompanying table.
Standard
Coefficients
Intercept
21187.94
Error
733.42
t Stat p-value
28.89 1.56E-16
Age
-1208.25
128.95 -9.37
2.41E-08
a. What is the estimate for B₁? Interpret this value.
b. What is the sample regression equation?
C. Predict the selling price of a 5-year-old sedan.
ian income of $50,000.
erty rate of
13. Using data from 50 workers, a researcher estimates Wage =
Bo+B,Education + B₂Experience + B3Age+e, where Wage
is the hourly wage rate and Education, Experience, and Age
are the years of higher education, the years of experience, and
the age of the worker, respectively. A portion of the regression
results is shown in the following table. ni ogolloo bash
1
Standard
Coefficients error
t stat p-value
Intercept
7.87
4.09
1.93
0.0603
Education
1.44
0.34
4.24 0.0001
Experience
0.45
0.14
3.16
0.0028
Age
-0.01
0.08 -0.14 0.8920
a. Interpret the estimated coefficients for Education and
Experience.
b. Predict the hourly wage rate for a 30-year-old worker
with four years of higher education and three years of
experience.
Chapter 2 Solutions
ELEMENTARY SATISTICS IA
Ch. 2.1 - McDonalds Dinner Service Times Refer 10 the...Ch. 2.1 - McDonalds Dinner Service Times Refer to the...Ch. 2.1 - Relative Frequency Distribution Use percentages to...Ch. 2.1 - Whats Wrong? Heights of adult males are known to...Ch. 2.1 - In Exercise 58, identify the class width, class...Ch. 2.1 - In Exercises 58, identify the class width, class...Ch. 2.1 - In Exercises 58, identify the class width, class...Ch. 2.1 - In Exercises 58, identify the class width, class...Ch. 2.1 - Normal Distributions. In Exercises 9 and 10, using...Ch. 2.1 - Normal Distributions. In Exercises 9 and 10, using...
Ch. 2.1 - Constructing Frequency Distributions. In Exercises...Ch. 2.1 - Constructing Frequency Distributions. In Exercises...Ch. 2.1 - Constructing Frequency Distributions. In Exercises...Ch. 2.1 - Burger King Dinner Service Times Refer to Data Set...Ch. 2.1 - Wendys Lunch Service Times Refer to Data Set 25...Ch. 2.1 - Wendys Dinner Service Times Refer to Data Set 25...Ch. 2.1 - Analysis of Last Digits Heights of statistics...Ch. 2.1 - Analysis of Last Digits Weights of respondents...Ch. 2.1 - Oscar Winners Construct one table (similar to...Ch. 2.1 - Blood Platelet Counts Construct one table (similar...Ch. 2.1 - Cumulative Frequency Distributions. In Exercises...Ch. 2.1 - Cumulative Frequency Distributions. In Exercises...Ch. 2.1 - Categorical Data. In Exercises 23 and 24, use the...Ch. 2.1 - Categorical Data. In Exercises 23 and 24, use the...Ch. 2.1 - Large Data Sets. Exercises 2528 involve large sets...Ch. 2.1 - Large Data Sets. Exercises 2528 involve large sets...Ch. 2.1 - Large Data Sets. Exercises 2528 involve large sets...Ch. 2.1 - Large Data Sets. Exercises 2528 involve large sets...Ch. 2.1 - Interpreting Effects of Outliers Refer to Data Set...Ch. 2.2 - Heights Heights of adult males are normally...Ch. 2.2 - More Heights The population of heights of adult...Ch. 2.2 - Blood Platelet Counts Listed below are blood...Ch. 2.2 - Blood Platelet Counts If we collect a sample of...Ch. 2.2 - Interpreting a Histogram. In Exercises 58, answer...Ch. 2.2 - Prob. 6BSCCh. 2.2 - Interpreting a Histogram. In Exercises 58, answer...Ch. 2.2 - Prob. 8BSCCh. 2.2 - Constructing Histograms. In Exercises 9-16,...Ch. 2.2 - Constructing Histograms. In Exercises 9-16,...Ch. 2.2 - Burger King Lunch Service Times Use the frequency...Ch. 2.2 - Burger King Dinner Service Times Use the frequency...Ch. 2.2 - Wendys Lunch Service Times Use the frequency...Ch. 2.2 - Wendys Dinner Service Times Use the frequency...Ch. 2.2 - Analysis of Last Digits Use the frequency...Ch. 2.2 - Analysis of Last Digits Use the frequency...Ch. 2.2 - Back-to-Back Relative Frequency Histograms When...Ch. 2.2 - Interpreting Normal Quantile Plots Which of the...Ch. 2.3 - Body Temperatures Listed below are body...Ch. 2.3 - Voluntary Response Data If we have a large...Ch. 2.3 - Ethics There are data showing that smoking is...Ch. 2.3 - CVDOT Section 2-1 introduced important...Ch. 2.3 - Dotplots. In Exercises 5 and 6, construct the...Ch. 2.3 - Diastolic Blood Pressure Listed below are...Ch. 2.3 - Stem plots. In Exercises 7 and 8, construct the...Ch. 2.3 - Stemplots. In Exercises 7 and 8, construct the...Ch. 2.3 - Time-Series Graphs. In Exercises 9 and 10,...Ch. 2.3 - Time-Series Graphs. In Exercises 9 and 10,...Ch. 2.3 - Pareto Charts. In Exercises 11 and 12 construct...Ch. 2.3 - Pareto Charts. In Exercises 11 and 12 construct...Ch. 2.3 - Pie Charts. In Exercises 13 and 14, construct the...Ch. 2.3 - Pie Charts. In Exercises 13 and 14, construct the...Ch. 2.3 - Frequency Polygon. In Exercises 15 and 16,...Ch. 2.3 - Frequency Polygon. In Exercises 15 and 16,...Ch. 2.3 - Self-Driving Vehicles In a survey of adults,...Ch. 2.3 - Deceptive Graphs. In Exercises 17-20, identify how...Ch. 2.3 - Deceptive Graphs. In Exercises 17-20, identify how...Ch. 2.3 - Deceptive Graphs. In Exercises 17-20, identify how...Ch. 2.3 - Expanded Stemplots A stemplot can be condensed by...Ch. 2.4 - Linear Correlation In this section we use r to...Ch. 2.4 - Causation A study has shown that there is a...Ch. 2.4 - Scanerplot What is a scatterplot and how does it...Ch. 2.4 - Estimating r For each of the following, estimate...Ch. 2.4 - Scatterplot. In Exercises 5-8, use the sample data...Ch. 2.4 - Scatterplot. In Exercises 5-8, use the sample data...Ch. 2.4 - Scatterplot. In Exercises 5-8, use the sample data...Ch. 2.4 - Scatterplot. In Exercises 5-8, use the sample data...Ch. 2.4 - Linear Correlation Coefficient In Exercises 9-12,...Ch. 2.4 - Linear Correlation Coefficient In Exercises 9-12,...Ch. 2.4 - Linear Correlation Coefficient In Exercises 9-12,...Ch. 2.4 - Using the data from Exercise 8 Heights of Fathers...Ch. 2.4 - Prob. 13BBCh. 2.4 - P-Values In Exercises 13-16, write a statement...Ch. 2.4 - P-Values In Exercises 13-16, write a statement...Ch. 2.4 - P-Values In Exercises 13-16, write a statement...Ch. 2 - Cookies Refer to the accompanying frequency...Ch. 2 - Cookies Using the same frequency distribution from...Ch. 2 - Cookies Using the same frequency distribution from...Ch. 2 - Cookies A stemplot of the same cookies summarized...Ch. 2 - Computers As a quality control manager at Texas...Ch. 2 - Distribution of Wealth In recent years, there has...Ch. 2 - Health Test In an investigation of a relationship...Ch. 2 - Lottery In Floridas Play 4 lottery game, four...Ch. 2 - Seatbelts The Beams Seatbelts company...Ch. 2 - Seatbelts A histogram is to be constructed from...Ch. 2 - Frequency Distribution of Body Temperatures...Ch. 2 - Histogram of Body Temperatures Construct the...Ch. 2 - Dotplot of Body Temperatures Construct a dotplot...Ch. 2 - Stemplot of Body Temperatures Construct a stemplot...Ch. 2 - Body Temperatures Listed below are the...Ch. 2 - Environment a. After collecting the average (mean)...Ch. 2 - Its Like Time Do This Exercise In a Marist survey...Ch. 2 - Whatever Use the same data from Exercise 7 to...Ch. 2 - In Exercises 1-6 refer to the data below, which...Ch. 2 - Frequency Distribution For the frequency...Ch. 2 - In Exercises 1-6, refer to the data below, which...Ch. 2 - In Exercises 1-6, refer to the data below, which...Ch. 2 - In Exercises 1-6, refer to the data below, which...Ch. 2 - Data Type a. The listed playing times are all...Ch. 2 - It was stated in this chapter that the days of...Ch. 2 - Fast Food Restaurant Drive-Through Service Times:...
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