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A series of exercises focused on regression analysis, a statistical method used to examine the relationship between variables. The exercises involve interpreting data, calculating predictions using a line of best fit, and determining the reliability and reasonableness of those predictions. The document also explores the concept of the coefficient of determination (r-squared), which quantifies the proportion of variability in the dependent variable that can be explained by the independent variable. These exercises are valuable for students studying statistics and data analysis, providing practical applications of regression concepts.
Typology: Exams
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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
Perfect. Your hard work is paying off 😀
response - correct
(^1) 46 point 9 2 $46.92$46.
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? Great work! That's correct. 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.
Correct answer:
is between these values, the estimate is both reliable and reasonable.
Michelle is studying the relationship between the hours worked (per week) and time spent reading (per day) and has collected the data shown in the table. The line of best fit for the data is
relationship between the variables.
(a) According to the line of best fit, what would be the predicted number of minutes spent
as needed.
The estimate, a predicted time of 77.47 minutes, is reliable but unreasonable. The estimate, a predicted time of 77.47 minutes, is both unreliable and unreasonable. The estimate, a predicted time of 77.47 minutes, is both reliable and reasonable.
Correct answer:
A medical experiment on tumor growth gives the following data table. x y
The least squares regression line was found. Using technology, it was determined that the total
Great work! That's correct. 0 point 9 6 6$$0.9660 point 9 6 6 - correct
Correct answers:
$$no response given Correct answers: 00 point 9 6 6$0.966$0.
Something's not right... There is an error in the instruction or question. This looks broken... A graph/image/equation/video isn't working I cannot enter my answer. A problem is preventing me from entering an answer to this question. I have an idea! I have some feedback/suggestions.
A scientific study on mesothelioma caused by asbestos gives the following data table. Micrograms of asbestos inhaled Area of scar tissue (cm^2 )
A new mine opened and the number of dump truck loads of material removed was recorded. The table below shows the number of dump truck loads of material removed and the number of days since the mine opened. Days (since opening) # of dump truck loads
A least squares regression line was found. Using technology, it was determined that the total sum
these values to calculate the coefficient of determination. Round your answer to three decimal places. That's incorrect - mistakes are part of learning. Keep trying!
Correct answer:
Your answer:
The coefficient of determination is SSRSST and not the square root of that value. Something's not right... There is an error in the instruction or question. This looks broken... A graph/image/equation/video isn't working I cannot enter my answer. A problem is preventing me from entering an answer to this question. I have an idea! I have some feedback/suggestions.
A new mine opened and the number of dump truck loads of material removed was recorded. The table below shows the number of dump truck loads of material removed and the number of days since the mine opened. Days (since opening) # of dump truck loads
x y
A least squares regression line was found. Using technology, it was determined that the total sum
the regression model. Round your answer to the nearest integer. That's incorrect - mistakes are part of learning. Keep trying! 31% 69% 0.69% 13%
Correct answer:
Your answer:
Something's not right... There is an error in the instruction or question. This looks broken... A graph/image/equation/video isn't working I cannot enter my answer. A problem is preventing me from entering an answer to this question. I have an idea! I have some feedback/suggestions.
A fishing enthusiast puts out different numbers of lines at once on several fishing trips to the same location and records the number of fish he catches on each trip. The table below shows the number of lines and number of fish caught on his trips. Fishing lines Fish caught 4 13 5 15 7 25 11 29 12 26
determination.
Calorie intake (1000) Weight gained (Ounces)
Not quite right - check out the answer explanation. R 2 =0. Therefore, 24.98% of the variation in the observed y -values can be explained by the estimated regression equation. R 2 =0. Therefore, 75.03% of the variation in the observed y -values can be explained by the estimated regression equation. R 2 =1. Therefore, 13.329% of the variation in the observed y -values can be explained by the estimated regression equation. R 2 =0. Therefore, 33.29% of the variation in the observed y -values can be explained by the estimated regression equation.
Correct answer:
regression equation.
Your answer:
regression equation. The coefficient of determination is SSRSST and not SSESST
A scientific study on graphite density gives the following data table. Distance from center of vein Density
Perfect. Your hard work is paying off 😀 R 2 =0. Therefore, 3.88% of the variation in the observed y -values can be explained by the estimated regression equation. R 2 =0.
explained by the variance in the independent variable.
Answer 1: Keep trying - mistakes can help us grow.
Answer 2: Not quite - review the answer explanation to help get the next one.
Answer 1: That's not right - let's review the answer.
Answer 2: Keep trying - mistakes can help us grow.
Answer 1: That's incorrect - mistakes are part of learning. Keep trying!
Answer 2: Well done! You got it right.
A scientific study on construction delays gives the following data table. Construction delay (hours) Increased cost ($1000)
Great work! That's correct. R 2 =0. Therefore, 86.31% of the variation in the observed y -values can be explained by the estimated regression equation. R 2 =1. Therefore, 1.1586% of the variation in the observed y -values can be explained by the estimated regression equation. R 2 =0. Therefore, 13.69% of the variation in the observed y -values can be explained by the estimated regression equation. R 2 =0. Therefore, 15.86% of the variation in the observed y -values can be explained by the estimated regression equation.
Correct answer:
regression equation.
explained by the variance in the independent variable.
Correct! You nailed it.