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Math Problem Solver App for 5-Minute Checks and Regression Analysis

A helpful app that provides step-by-step solutions for 5-minute math checks and regression analysis problems, with accurate predictions and explanations.

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Math Problem Solver App for 5-Minute Checks and Regression Analysis

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  1. Splash Screen

  2. A. B.–1 C. D. Solve 9x – 2 = 273x. 5–Minute Check 1

  3. A. B.–1 C. D. Solve 9x – 2 = 273x. 5–Minute Check 1

  4. A.5 B. C.20 D.–2 Solve 3 + 5 log (2x) = 8. 5–Minute Check 2

  5. Solve 3e5x= 74. Round to the nearest hundredth. A.0.28 B.0.64 C.1.08 D.0.47 5–Minute Check 4

  6. Solve 3e5x= 74. Round to the nearest hundredth. A.0.28 B.0.64 C.1.08 D.0.47 5–Minute Check 4

  7. Solve 32x – 7 = 54x + 2. Round to the nearest hundredth. A.–4.5 B.–2.57 C.–0.39 D.no solution 5–Minute Check 5

  8. Solve 32x – 7 = 54x + 2. Round to the nearest hundredth. A.–4.5 B.–2.57 C.–0.39 D.no solution 5–Minute Check 5

  9. A. B. C. D.no solution Solve ln (2x − 1) + ln (x + 3) = ln 9. 5–Minute Check 6

  10. A. B. C. D.no solution Solve ln (2x − 1) + ln (x + 3) = ln 9. 5–Minute Check 6

  11. Exponential Regression BACTERIA The growth of a culture of bacteria is shown in the table. Use exponential regression to model the data. Then use your model to predict how many bacteria there will be after 24 hours. Example 1

  12. Exponential Regression Step 1 Make a scatter plot. Let B(t) represent the bacteria population after t hours. Enter and graph the data on a graphing calculator to create the scatter plot. Notice that the plot very closely resembles the graph of an exponential growth function. Example 1

  13. Step 2 Find an exponential function to model the data. The bacteria population at time t = 0 is represented by a and the growth rate, 18.9% per hour, is represented by b. Notice that the correlation coefficient r ≈ 0.9999 is close to 1, indicating a close fit to the data. In the Y = menu, pick up this regression equation by entering VARS , Statistics, EQ, RegEQ. Exponential Regression Example 1

  14. Exponential Regression Step 3 Graph the regression equation and scatter plot on the same screen. Notice that the graph of the regression fits the data very well. Example 1

  15. Exponential Regression Step 4 Use the model to make a prediction. The regression model is B(t) = 400(1.19)t. To predict the bacteria population after 24 hours, use the CALC feature to evaluate the function for B(24) as shown. Based on the model, the bacteria population will be about 26,013 after 24 hours. Example 1

  16. Exponential Regression Answer:B(t) = 400(1.19)t; about 26,013 bacteria Example 1

  17. The number of leaves falling per hour from the trees in an arboretum is shown in the table below. Use an exponential regression model to predict how many leaves will fall in the tenth hour. A. 415 B. 500 C. 485 D. 622 Example 1

  18. The number of leaves falling per hour from the trees in an arboretum is shown in the table below. Use an exponential regression model to predict how many leaves will fall in the tenth hour. A. 415 B. 500 C. 485 D. 622 Example 1

  19. Logarithmic Regression MEMORY A group of students studied a photograph for 30 seconds. Beginning 1 day later, a test was given each day to test their memory of the photograph. The average score for each day is shown in the table. Use logarithmic regression to model the data. Then use your model to predict the average test score after 2 weeks. Example 2

  20. Logarithmic Regression Step 1 Let S(t) represent the students’ average score t days after studying the photograph. Enter and graph the data on a graphing calculator to create the scatter plot. Example 2

  21. Logarithmic Regression Step 2 Calculate the regression equation using LnReg. The correlation coefficient r ≈ –0.9835 indicates a close fit to the data. Rounding each value to two decimal places, a natural logarithm function that models the data is S(t) = 73.1 – 7.31ln x. Example 2

  22. Logarithmic Regression Step 3 The figure shows the results of the regression S(t). The graph of S(t) = 73.1 – 7.31 ln x fits the data very well. Example 2

  23. Logarithmic Regression Step 4To predict the students’ average score after 14 days, use the CALC feature to evaluate the function for S(14) as shown. Based on the model, the students’ average score will be about 53.8%. Answer: Example 2

  24. Logarithmic Regression Step 4To predict the students’ average score after 14 days, use the CALC feature to evaluate the function for S(14) as shown. Based on the model, the students’ average score will be about 53.8%. Answer:S(t) = 73.1 – 7.31 ln t; 53.8% Example 2

  25. MEMORY Students do not remember everything presented to them in a mathematics class. The table below shows the average percentage of information retained t days after the lesson by a group of students. Use a logarithmic regression model to predict the students’ retention percentage on the tenth day. A. 46.3% B. 45.9% C. 45.1% D. 43.3% Example 2

  26. MEMORY Students do not remember everything presented to them in a mathematics class. The table below shows the average percentage of information retained t days after the lesson by a group of students. Use a logarithmic regression model to predict the students’ retention percentage on the tenth day. A. 46.3% B. 45.9% C. 45.1% D. 43.3% Example 2

  27. Key Concept 1

  28. Logistic Regression ADVERTISING The number of television ads for a certain product affects the percentage of people who purchase the product as shown in the table. Use logistic regression to find a logistic growth function to model the data. Then use your model to predict the limit to the percentage of people who will purchase the product. Example 3

  29. Logistic Regression Step 1 Let P(x) represent the percentage of people who purchase a product after x number of ads. The scatter plot of the data resembles the graph of a logistic growth function. Example 3

  30. Step 2 Calculate the Logistic regression equation. Rounding values as shown yields the following logistic function for the data. P(x) = Logistic Regression Example 3

  31. Step 3 The graph of P(x) = fits the data very well as shown. Logistic Regression Example 3

  32. Logistic Regression Step 4 The limit to growth in the modeling equation is the numerator of the fraction or 55.86. Therefore, according to this model, the number of people who purchase an item based on the number of adds will approach, but will never reach 56%. Answer: Example 3

  33. Answer:P(x) = ; about 56% Logistic Regression Step 4 The limit to growth in the modeling equation is the numerator of the fraction or 55.86. Therefore, according to this model, the number of people who purchase an item based on the number of adds will approach, but will never reach 56%. Example 3

  34. MUSIC The probability of a person liking a song increases with the number of friends who say they also like the song. The data shown in the table models this situation. Use a logistic growth function to determine the limit to the probability that a person will like a song based on the number of friends who say they like the song. A. about 31% B. about 27% C. about 56% D. about 29% Example 3

  35. MUSIC The probability of a person liking a song increases with the number of friends who say they also like the song. The data shown in the table models this situation. Use a logistic growth function to determine the limit to the probability that a person will like a song based on the number of friends who say they like the song. A. about 31% B. about 27% C. about 56% D. about 29% Example 3

  36. Choose a Regression INTERNET Use the data in the table to determine a regression equation that best relates the profit of a Web site with the time it has been in business. Then determine the approximate time it will take for the Web site to earn a profit of $100,000 in one year. Example 4

  37. Choose a Regression Step 1 From the shape of the scatter plot shown, it appears that these data could best be modeled by the exponential regression model. Example 4

  38. Choose a Regression Step 2 Use the LinReg(ax + b), QuadReg, CubicReg, LnReg, ExpReg, PwrReg, and Logistic regression equations to fit the data, noting the corresponding correlation coefficients. The regression equation with a correlation coefficient closest to 1 is the ExpReg with equation rounded to P(t) = 1000(1.78)t. Step 3 The ExpReg equation does indeed fit the data very well as shown. Example 4

  39. Choose a Regression Example 4

  40. Choose a Regression Step 4 Use the CALC INTERSECT feature of your calculator to find the value of t when P(t) = 100,000. The intersection of the two graphs, y = 100,000 and P(t) = 1000(1.78)t is shown to be about 7.99 years. Answer: Example 4

  41. Choose a Regression Step 4 Use the CALC INTERSECT feature of your calculator to find the value of t when P(t) = 100,000. The intersection of the two graphs, y = 100,000 and P(t) = 1000(1.78)t is shown to be about 7.99 years. Answer:P(t) = 1000(1.78)t; 7.99 years Example 4

  42. BUSINESS Use the data in the table to determine a regression equation that best relates the profit of a business with the time it has been in business. A. LinReg(ax + b): y = 42.05x + 1997.11 B. PwrReg: y = 2027.16x0.05 C. ExpREg: y = 2000(1.02)x D. QuadReg: y = 0.42x2 + 39.52x + 2000.06 Example 4

  43. BUSINESS Use the data in the table to determine a regression equation that best relates the profit of a business with the time it has been in business. A. LinReg(ax + b): y = 42.05x + 1997.11 B. PwrReg: y = 2027.16x0.05 C. ExpREg: y = 2000(1.02)x D. QuadReg: y = 0.42x2 + 39.52x + 2000.06 Example 4

  44. Key Concept 2

  45. Linearizing Data Make a scatter plot of the data, and linearize the data assuming a power model. Graph the linearized data, and find the linear regression equation. Then use this linear model to find a model for the original data. Example 5

  46. Linearizing Data Step 1 Graph a scatter plot of the data. Example 5

  47. Linearizing Data Step 2 Linearize the data. To linearize the data that can be modeled by a power function, take the natural log of both x- and y-values. Example 5

  48. Step 3 Graph the linearized data and find the linear regression equation. The graph of (ln x, ln y) appears to cluster about a line. Let x = ln x and y = ln y. Using linear regression, the approximate equation modeling the linearized data is y = 3x + 1.1. ˆ ˆ ˆ ˆ Linearizing Data Example 5

  49. ˆ ˆ Replace x with ln x and y with ln y, and solve for y. y= 3x + 1.1 Equation for linearized data ˆ ˆ ˆ ˆ ln y= 3 ln x + 1.1 x = ln x and y = ln y Linearizing Data Step 4 Use the model for the linearized data to find a model for the original data. eln y = e3 ln x + 1.1Exponentiate each side y = e3 ln x + 1.1Inverse Property of Logarithms y = e3ln xe1.1 Product Property of Exponents y = eln x3e1.1Power Property of Logarithms Example 5

  50. Linearizing Data y = x3e1.1 Inverse Property of Logarithms y = 3x3e1.1 ≈ 3 Therefore, a power function that models these data is y = 3x3. Answer: Example 5

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