Question DetailsNormal
$ 14.00
Chamberlain College: MATH 225N Answers–Performing Linear Regressions with Technology (Graded A)
- From Mathematics, Probability
Question posted by
- Quizmaster
- Rating : 1
- Grade : A+
- Questions : 0
- Solutions : 632
- Blog : 0
- Earned : $1076.70
Chamberlain College Of Nursing: MATH 225N Week 8 Latest Questions with Answers–Performing Linear Regressions with Technology (Graded A)
Available Answer
$ 14.00
[Solved] Chamberlain College: MATH 225N Answers–Performing Linear Regressions with Technology (Graded A)
- This solution is not purchased yet.
- Submitted On 29 Mar, 2020 09:01:04
Answer posted by
- Quizmaster
- Rating : 1
- Grade : A+
- Questions : 0
- Solutions : 632
- Blog : 0
- Earned : $1076.70
Chamberlain College Of Nursing: MATH 225N Week 8 Latest Questions with Answers–Performing Linear Regressions with Technology (Graded A)
An amateur astronomer is researching statistical properties of known stars using a variety of databases. They collect the absolute magnitude or MV and stellar mass or M⊙ for 30 stars. The absolute magnitude of a star is the intensity of light that would be observed from the star at a distance of 10 parsecs from the star. This is measured in terms of a particular band of the light spectrum, indicated by the subscript letter, which in this case is V for the visual light spectrum. The scale is logarithmic and an MV that is 1 less than another comes from a star that is 10 times more luminous than the other. The stellar mass of a star is how many times the sun's mass it has. The data is provided below. Use Excel to calculate the correlation coefficient r between the two data sets, rounding to two decimal places.
________________________________________
Correct! You nailed it.
________________________________________
r= −0.93
Answer Explanation
The correlation coefficient, rounded to two decimal places, is r≈−0.93.
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 millions of dollars for 30 quarters. The data are provided below. Use Excel to calculate the correlation coefficient r between the two data sets. Round your answer to two decimal places.
Yes that's right. Keep it up!
________________________________________
r= −0.81
Answer Explanation
The correlation coefficient, rounded to two decimal places, is r≈−0.81.
The table below contains the geographic latitudes, x, and average January temperatures, y, of 20cities. Use Excel to find the best fit linear regression equation. Round the slope and 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!
________________________________________
y = −2.68, x147.24
Thus, the equation of line of best fit with slope and intercept rounded to two decimal places is yˆ=−2.68x+147.24.
An organization collects information on the life expectancy (in years) of a person in certain countries and the fertility rate per woman in those countries. The data for 21 randomly selected countries for the year 2011 is given below. Use Excel to find the best fit linear regression equation, where fertility rate is the explanatory variable. Round the slope and intercept to two decimal places.
________________________________________
y = −4.21, x 83.68 Answer Explanationyˆ=−4.21, x+83.68.
An economist is trying to understand whether there is a strong link between CEO pay ratio and corporate revenue. The economist gathered data including the CEO pay ratio and corporate revenue for 30 companies for a particular year. The pay ratio data is reported by the companies and represents the ratio of CEO compensation to the median employee salary. The data are provided below. Use Excel to calculate the correlation coefficient r between the two data sets. Round your answer to two decimal places.
Perfect. Your hard work is paying off 😀
________________________________________
r= −0.17
The correlation coefficient, rounded to two decimal places, is r≈−0.17.
A researcher is interested in whether the variation in the size of human beings is proportional throughout each part of the human. To partly answer this question they looked at the correlation between the foot length (in millimeters) and height (in centimeters) of 30 randomly selected adult males. The data is provided below. Use Excel to calculate the correlation coefficient r between the two data sets. Round your answer to two decimal places.
________________________________________
Great work! That's correct.
________________________________________
r= 0.50
The correlation coefficient, rounded to two decimal places, is r≈0.50.
The table below gives the average weight (in kilograms) of certain people ages 1–20. Use Excel to find the best fit linear regression equation, where age is the explanatory variable. Round the slope and intercept to two decimal places.
Answer 1:
________________________________________
That's not right - let's review the answer.
________________________________________
y = 0.35, x28.99
Answer 2:
________________________________________
Well done! You got it right.
________________________________________
y = 2.89, x 4.69
Thus, the equation of line of best fit with slope and intercept rounded to two decimal places is yˆ=2.86x+4.69.
In the following table, the age (in years) of the respondents is given as the x value, and the earnings (in thousands of dollars) of the respondents are given as the y value. Use Excel to find 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!
________________________________________
y = 0.433, x=24.493
Answer Explanation
Thus, the equation of line of best fit with slope and intercept rounded to three decimal places is yˆ=0.433x+24.493.
PREDICITONS USING LINEAR REGRESSION
Question
The table shows data collected on the relationship between the time spent studying per day and the time spent reading per day. The line of best fit for the data is yˆ=0.16x+36.2. Assume the line of best fit is significant and there is a strong linear relationship between the variables.
Studying (Minutes) 507090110 Reading (Minutes) 44485054
(a) According to the line of best fit, what would be the predicted number of minutes spent reading for someone who spent 67 minutes studying? Round your answer to two decimal places.
________________________________________
Yes that's right. Keep it up!
________________________________________
The predicted number of minutes spent reading is $$46.92.
Answer Explanation
The predicted number of minutes spent reading is 1$$.
Correct answers:
• 46.92
Substitute 67 for x into the line of best fit to estimate the number of minutes spent reading for someone who spent 67 minutes studying: yˆ=0.16(67)+36.2=46.92.
Question
The table shows data collected on the relationship between the time spent studying per day and the time spent reading per day. The line of best fit for the data is yˆ=0.16x+36.2.
Studying (Minutes) 507090110 Reading (Minutes) 44485054
(a) According to the line of best fit, the predicted number of minutes spent reading for someone who spent 67minutes studying is 46.92.
(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:
The estimate, a predicted time of 46.92 minutes, is both reliable and reasonable.
The data in the table only includes studying times between 50 and 110 minutes, so the line of best fit gives reliable and reasonable predictions for values of x between 50 and 110. Since 67 is between these values, the estimate is both reliable and reasonable.
Your answer:
The estimate, a predicted time of 46.92 minutes, is unreliable but reasonable.
This estimate is both reliable and reasonable because 67 is inside the range 50 to 110 given in the table.
Janet is studying the relationship between the average number of minutes spent exercising per day and math test scores and has collected the data shown in the table. The line of best fit for the data is yˆ=0.46x+66.4.
Minutes 15202530 Test Score 73767880
(a) According to the line of best fit, the predicted test score for someone who spent 23 minutes exercising is 76.98.
(b) Is it reasonable to use this line of best fit to make the above prediction?
________________________________________
Not quite - review the answer explanation to help get the next one.
________________________________________
The estimate, a predicted test score of 76.98, is reliable and reasonable.
The estimate, a predicted test score of 76.98, is unreliable but reasonable.
The estimate, a predicted test score of 76.98, is unreliable and unreasonable.
The estimate, a predicted test score of 76.98, is reliable but unreasonable.
Answer Explanation
Correct answer:
The estimate, a predicted test score of 76.98, is reliable and reasonable.
The data in the table only includes exercise times between 15 and 30 minutes, so the line of best fit gives reliable and reasonable predictions for values of x between 15 and 30. Since 23 is between these values, the estimate is reasonable.
Your answer:
The estimate, a predicted test score of 76.98, is unreliable and unreasonable.
This estimate is reliable, because 23 is inside the range 15 to 30 given in the table. And, it is a realistic score, so it is reasonable.
Nomenclature
• When using regression lines to make predictions, if the x-value is within the range of observed x-values, one can conclude the prediction is both reliable and reasonable. That is, the prediction is accurate and possible. For example, if a prediction were made using x=1995 in the video above, one could conclude the predicted y-value is both reliable (quite accurate) and reasonable (possible). This is an example of interpolation.
• When using regression lines to make predictions, if the x-value is outside the range of observed x-values, one cannot conclude the prediction is both reliable and reasonable. That is, the prediction is will be much less accurate and the prediction may, or may not, be possible. For example, x=2020 is not within the range of 1950 to 2000. Therefore, the 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.
Reasonable Predictions
Note that not all predictions are reasonable using a line of best fit. Typically, it is considered reasonable to make predictions for x-values which are between the smallest and largest observed x-values. These are known as interpolated values. Typically, it is considered unreasonable to make predictions for x-values which are not between the smallest and largest observed x-values. These are known as extrapolated values.
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
In the figure above, we see that the observed values have x-values ranging from 6 to 14. So it would be reasonable to use the line of best fit to make a prediction for the x value of 9 (because it is between 6 and 14), but it would be unreasonable to make a prediction for the x-value of 20 (because that is outside of the range).
Nomenclature
• When using regression lines to make predictions, if the x-value is within the range of observed x-values, one can conclude the prediction is both reliable and reasonable. That is, the prediction is accurate and possible...
Other Similar Questions
Nurse...
NR 602 MIDTERM EXAM 2023 Answered 100% Correct (Chamberlain College of Nursing)
NR 602 MIDTERM EXAM 2023 Answered 100% Correct (Chamberlain College of Nursing)
Role-play with equipment during the course of a physical examination would be most beneficial with which of the following groups? - Preschoolers...
Peakv...
2024 NR 228 FINAL EXAM REAL EXAM 150 QUESTIONS AND CORRECT ANSWERS| AGRADE|CHAMBERLAIN
2024 NR 228 FINAL EXAM REAL EXAM 150 QUESTIONS AND CORRECT
ANSWERS| AGRADE|CHAMBERLAIN COLLEGE OF NURSING...
ULTIM...
NR603 Week 6 Case Summary chamberlain university 100% correct
NR603 Week 6 Case Summary chamberlain university 100% correct
NR603 Week 6 Case Summary chamberlain university 100% correct
NR603 Week 6 Case Summary chamberlain university 100% correct
NR603 Week 6 Case Summary chamberlai...
Nurse...
Chamberlain 2023 ATI RN COMPREHENSIVE PREDICTOR RETAKE 2023-2024 GRADED A+
2023 ATI RN COMPREHENSIVE PREDICTOR
RETAKE 2023-2024 GRADED A+ / ATI RN
COMPREHENSIVE PREDICTOR RETAKE
2023-2024 GRADED A+...
ULTIM...
NR 602 Midterm Exam Study Guide (Latest, 2023-2024) Chamberlain College of Nursing (Verified
NR 602 Midterm Exam Study Guide (Latest, 2023-2024) Chamberlain College of Nursing (Verified
NR 602 Midterm Exam Study Guide (Latest, 2023-2024) Chamberlain College of Nursing (Verified
NR 602 Midterm Exam Study Guide (Late...