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A series of exercises and explanations related to linear regression analysis using technology. It covers topics such as calculating correlation coefficients, finding best-fit linear regression equations, and making predictions based on the regression line. The exercises are designed to help students understand the concepts and applications of linear regression in real-world scenarios.
Typology: Exams
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Performing Linear Regressions with Technology An amateur astronomer is researching statistical properties of known stars using a variety of
absolute magnitude of a star is the intensity of light that would be observed from the star at a
more luminous than the other. The stellar mass of a star is how many times the sun's mass it has.
data sets, rounding to two decimal places. Correct! You nailed it.
Answer Explanation
A market researcher looked at the quarterly sales revenue for a large e-commerce store and for a large brick-and-mortar retailer over the same period. The researcher recorded the revenue in
Yes that's right. Keep it up!
Answer Explanation
intercept to two decimal places. x y 46 23 32 60 39 40 33 59 38 57 40 33 42 33 30 64 34 56 HelpCopy to ClipboardDownload CSV Yes that's right. Keep it up!
Thus, the equation of line of best fit with slope and intercept rounded to two decimal places
An organization collects information on the life expectancy (in years) of a person in certain
equation, where fertility rate is the explanatory variable. Round the slope and intercept to two decimal places. y = −4.21, x 83.68 Answer Explanation yˆ=−4.21, x+83.68.
Thus, the equation of line of best fit with slope and intercept rounded to two decimal places
the best fit linear regression equation in thousands of dollars. Round the slope and intercept to three decimal places. Yes that's right. Keep it up!
Answer Explanation Thus, the equation of line of best fit with slope and intercept rounded to three decimal places
PREDICITONS USING LINEAR REGRESSION Question The table shows data collected on the relationship between the time spent studying per day and
line of best fit is significant and there is a strong linear relationship between the variables.
(a) According to the line of best fit, what would be the predicted number of minutes spent
Yes that's right. Keep it up!
Answer Explanation
Question The table shows data collected on the relationship between the time spent studying per day and
(a) According to the line of best fit, the predicted number of minutes spent reading for someone
(b) Is it reasonable to use this line of best fit to make the above prediction? That's incorrect - mistakes are part of learning. Keep trying! The estimate, a predicted time of 46.92 minutes, is both reliable and reasonable. The estimate, a predicted time of 46.92 minutes, is both unreliable and unreasonable. The estimate, a predicted time of 46.92 minutes, is reliable but unreasonable. The estimate, a predicted time of 46.92 minutes, is unreliable but reasonable. Answer Explanation Correct answer:
realistic score, so it is reasonable. Nomenclature
is, the prediction is accurate and possible. For example, if a prediction were made
reliable (quite accurate) and reasonable (possible). This is an example of interpolation.
That is, the prediction is will be much less accurate and the prediction may, or may not,
prediction is much less reliable (not as accurate) even though it is reasonable (it is possible that a person will live to be 79.72 years old). This is an example of extrapolation.
Note that not all predictions are reasonable using a line of best fit. Typically, it is considered
A scatterplot has a horizontal axis labeled x from 0 to 20 in increments of 1 and a vertical axis labeled y from 0 to 28 in increments of 2. 15 plotted points strictly follow the pattern of a line that rises from left to right and passes through the points left-parenthesis 6 comma 10 right- parentheses, left-parenthesis 8 comma 13 right-parenthesis, and left-parenthesis 14 comma 2 right-parentheses. There are other plotted points at left-parenthesis 10 comma 15 right- parenthesis and left-parenthesis 13 comma 19 right-parenthesis. The regions between the
horizontal axis points from 1 to 6 and 14 to 20 are shaded as unreasonable. The region between the horizontal axis points from 6 to 14 is shaded as reasonable. All coordinates are approximate
Nomenclature
is, the prediction is accurate and possible. For example, if a prediction were made
reliable (quite accurate) and reasonable (possible). This is an example of interpolation.
That is, the prediction is will be much less accurate and the prediction may, or may not,
prediction is much less reliable (not as accurate) even though it is reasonable (it is possible that a person will live to be 79.72 years old). This is an example of extrapolation.
Note that not all predictions are reasonable using a line of best fit. Typically, it is considered
the estimate is not reasonable.
impossible. Your answer:
Question Data is collected on the relationship between the average number of minutes spent exercising per day and math test scores. The data is shown in the table and the line of best fit for the data
relationship between the variables.
(a) According to the line of best fit, what would be the predicted test score for someone who
Well done! You got it right.
Answer Explanation
Question Data is collected on the relationship between the average number of minutes spent exercising per day and math test scores. The data is shown in the table and the line of best fit for the data
(b) Is it reasonable to use this line of best fit to make the above prediction? Perfect. Your hard work is paying off 😀 The estimate, a predicted test score of 80.56, is both reliable and reasonable. The estimate, a predicted test score of 80.56, is reliable but unreasonable. The estimate, a predicted test score of 80.56, is both unreliable and unreasonable. The estimate, a predicted test score of 80.56, is unreliable but reasonable. Answer Explanation Correct answer:
values, the estimate is both reliable and reasonable.
Question Data is collected on the relationship between the average daily temperature and time spent watching television. The data is shown in the table and the line of best fit for the data
(a) According to the line of best fit, the predicted number of minutes spent watching television
(b) Is it reasonable to use this line of best fit to make the above prediction? Correct! You nailed it. The estimate, a predicted time of 60.25 minutes, is unreliable but reasonable. The estimate, a predicted time of 60.25 minutes, is both reliable and reasonable. The estimate, a predicted time of 60.25 minutes, is both unreliable and unreasonable. The estimate, a predicted time of 60.25 minutes, is reliable but unreasonable. Answer Explanation Correct answer:
Question Homer is studying the relationship between the average daily temperature and time spent watching television and has collected the data shown in the table. The line of best fit for the data
relationship between the variables.
(a) According to the line of best fit, what would be the predicted number of minutes spent
decimal places, as needed. Yes that's right. Keep it up!
Answer Explanation
Question Homer is studying the relationship between the average daily temperature and time spent watching television and has collected the data shown in the table. The line of best fit for the data
(a) According to the line of best fit, the predicted number of minutes spent watching television
(b) Is it reasonable to use this line of best fit to make the above prediction?
The independent variable (x) is the amount of time Daniel consults. The dependent variable (y) is the amount, in dollars, Daniel earns for a consultation. Daniel charges a one-time fee of $95 (this is when x=0), so the y-intercept is 95. Daniel earns $70 for each hour he works, so the slope is 70. The independent variable (x) is the amount, in dollars, Daniel earns for a consultation. The dependent variable (y) is the amount of time Daniel consults. Daniel charges a one-time fee of $70 (this is when x=0), so the y-intercept is 70. Daniel earns $95 for each hour he works, so the slope is 95. The independent variable (x) is the amount of time Daniel consults. The dependent variable (y) is the amount, in dollars, Daniel earns for a consultation. Daniel charges a one-time fee of $70 (this is when x=0), so the y-intercept is 70. Daniel earns $95 for each hour he works, so the slope is 95. Answer Explanation Correct answer:
is the amount, in dollars, Daniel earns for a consultation.
changes. He may work different amounts per consultation, and his earnings are dependent on how many hours he works. This is why the amount, in dollars, Daniel earns for a consultation is
increase for each hour he works. Your answer:
is the amount, in dollars, Daniel earns for a consultation.
Question
Well done! You got it right.
Answer Explanation
$y=-20$ y =−
Question
Yes that's right. Keep it up!
Answer Explanation
$y=1$ y =
how many hours he works. This is why the amount, in dollars Evan earns for each session is the
increase for each hour he works Question Using a calculator or statistical software, find the linear regression line for the data in the table below.
x y 0
1
2
3
4
5
HelpCopy to ClipboardDownload CSV Answer 1: Keep trying - mistakes can help us grow.
Answer 2: Keep trying - mistakes can help us grow.
Answer Explanation
$y=0.54x+1.59$ y =0.54 x +1. If you use a TI-83 or TI-84 calculator, you press STAT, and then ENTER, which brings you to
Now, press STAT again, and arrow to the right, to CALC. Arrow down to the LinReg option and
Using spreadsheet software or other statistical software should give you the same result. Question Using a calculator or statistical software, find the linear regression line for the data in the table below.
x y 0
1
2
3
4
5
HelpCopy to ClipboardDownload CSV