SOLUTIONS MANUAL FOR BUSINESS STATISTICS
3RD EDITION BY DIRK TEMPELAAR, ROBERT A.
DONNELLY A++
CHAPTER 1
An Introduction to Business Statistics
1.1 Quantitative/Interval. The differences between average monthly temperatures are meaningful, but
there is no true zero point, i.e., absence of temperature.
1.2 Quantitative/Ratio. The differences between average monthly rainfalls are meaningful, and there
is a true zero point, because there may be a month without any rainfalls.
1.3 Qualitative/Ordinal. You can rank education level, but the differences between different
educational levels cannot be measured.
1.4 Qualitative/Nominal. The marital status is just a label without a meaningful difference, or ranking.
1.5 Quantitative/Ratio. The differences between ages of respondents are meaningful and there
is a true zero point: an age of the respondents that equals zero represents the absence of age.
1.6 Qualitative/Nominal. The genders are merely labels with no ranking or meaningful difference.
1.7 Quantitative/Interval. The differences between birth years are meaningful, but there is no true zero
point with calendar years.
1.8 Qualitative/ Nominal. The political affiliations are merely labels with no ranking or meaningful
difference.
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1.9 Qualitative/ Nominal. The races of the respondents are merely labels with no ranking or
meaningful difference.
1.10 Qualitative/ Ordinal. You can rank the performance rating, but the differences between different
performance ratings cannot be measured.
1.11 Qualitative/ Nominal. The uniform numbers of each member of the school’s sport team are labels
with no ranking or meaningful difference.
1.12 Qualitative/ordinal. The differences in the data values between class ranks are not meaningful.
1-2 Chapter 1
1.13 Quantitative/Ratio. The differences between final exam scores for your statistics class
are meaningful, and there is a true zero point because a student who did not take the exam would have a
score of zero.
1.14 Qualitative/Nominal. The state in which the respondents in a survey reside is a label and it is
meaningless to talk about the rating of this value.
1.15 Quantitative/Interval. The differences between SAT scores for graduating high school students are
meaningful, but there is no true zero point because a student with an SAT score equal to zero does not
indicate the absence of a score.
1.16 Qualitative/Ordinal. You can rank movie ratings, but the differences between different ratings
cannot be measured.
1.17 Qualitative/ordinal. The differences in the data values between ratings are not meaningful.
1.18 Qualitative/ordinal. The differences in the data values between ratings are not meaningful.
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1.19 Cross-sectional
1.20 Time series
1.21 Time series: Men weekly earnings over the five years. Time series: Women weekly earnings over
the five years.
1.22 Cross-sectional data: Men and women workers weekly earnings for any one particular year.
1.23 Cross-sectional: The number of 8x10, 11x14 and 13x19 prints sold over a particular year.
1.24 Time series: the number of 8x10 prints sold over the four years. Time series: the number of 11x14
prints sold over the four years. Time series: the number of 13x19 prints sold over the four years.
1.25 Descriptive statistics, because it identifies a sample mean.
1.26 Inferential statistics, because the statements about comparing the average costs of a hotel room in
two states was based on results from samples taken from two populations.
An Introduction to Business Statistics 1-3
1.27 Inferential statistics, because it would not be feasible to get the credit card debt from every
graduate student in the country. These results would be based on a sample of the population used to make
an inference about the entire population.
1.28 Descriptive statistics, because we summarize reviewer scores without going into inference.
1.29 Inferential statistics, because it would not be feasible to survey every American in the country.
,Created By: Irfan Ali
These results are based on a sample of the population used to make an inference on the entire population.
1.30 Descriptive statistics, because this percentage represents the proportion of a specific group of
customers arriving before 6 PM and is not making an inference about the entire population of customers.
CHAPTER 2
Displaying Descriptive Statistics
2.1
a) 27 128 100 therefore use 7 classes.
b) 29 512 300 therefore use 9 classes.
c) 210 1, 024 1, 000 therefore use 10 classes.
d) 211 2, 048 2, 000 therefore use 11 classes.
2.2 26 64 50 therefore use 6 classes.
74 16
Estimated Class Width 9.7 10
6
a) 16-25, 26-35, 36-45, 46-55, 56-65, 66-75
b) 16 to under 26, 26 to under 36, 36 to under 46,
46 to under 56, 56 to under 66, 66 to under 76
2.3
Cumulative
Frequency Relative Relative
Frequency Frequency
Number
1 6 0.250 0.250
2 6 0.250 0.500
3 5 0.208 0.708
4 4 0.167 0.875