Hw 9.1

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9.1 hw 11 The accompanying table shows the height​ (in inches) of 8 high school girls and their scores on an IQ test. Complete parts​ (a) through​ (d) below. ​Height, x 60 56 64 65 58 64 64 54 IQ​ score, y 109 98 106 113 93 109 116 128

STAT EDIT LineReg (ax+b) (a) Display the data in a scatter plot STAT EDIT L1 & L2 zoom 9 (see image) (b) Calculate the sample correlation coefficient r STAT CALC 4: LineReg (ax+b) r = -.006 ​(c) Describe the type of​ correlation, if​ any, and interpret the correlation in the context of the data. There is no linear correlation. (d) Interpret the correlation Based on the​ correlation, there does not appear to be a linear relationship between high school​ girls' heights and their IQ scores. (e) ​Use the table of critical values for the Pearson correlation coefficient to make a conclusion about the correlation coefficient. Let α=0.01. The critical value is .834. Therefore, there is not sufficient evidence at the 1​% level of significance to conclude that there is a significant linear correlation between high school​ girls' heights and their IQ scores.

9.1 hw 13 The accompanying table shows eleven altitudes​ (in thousands of​ feet) and the speeds of sound​ (in feet per​ second) at these altitudes. Complete parts​ (a) through​ (d) below. ​Altitude, x 0 5 10 15 20 25 30 35 40 45 50 Speed of​ sound, y 1116.8 1095.8 1077.2 1057.1 1037.4 1016.3 996.3 970.8 967.7 967.7 967.7

STAT EDIT LineReg (ax+b) (a) Display the data in a scatter plot STAT EDIT L1 & L2 zoom 9 (see image) (b) Calculate the sample correlation coefficient r STAT CALC 4: LineReg (ax+b) r = -.974 ​(c) Describe the type of​ correlation, if​ any, and interpret the correlation in the context of the data. There is a strong negative linear correlation. (d) Interpret the correlation As altitude​ increases, speeds of sound tend to decrease. (e) ​Use the table of critical values for the Pearson correlation coefficient to make a conclusion about the correlation coefficient. Let α=0.01. The critical value is .735. Therefore, there is sufficient evidence at the 1​% level of significance to conclude that there is a significant linear correlation between altitude and speed of sound.

9.1 hw 12 The accompanying table shows the earnings per share​ (in dollars) and the dividends per share​ (in dollars) for 6 companies in a recent year. Complete parts​ (a) through​ (d) below. Earnings per​ share, x 0.96 3.93 3.41 7.97 1.74 2.77 Dividends per​ share, y 0.95 0.38 2.15 1.02 0.69 1.32

STAT EDIT LineReg (ax+b) (a) Display the data in a scatter plot STAT EDIT L1 & L2 zoom 9 (see image) (b) Calculate the sample correlation coefficient r STAT CALC 4: LineReg (ax+b) r = .024 ​(c) Describe the type of​ correlation, if​ any, and interpret the correlation in the context of the data. There is no linear correlation. (d) Interpret the correlation Based on the​ correlation, there does not appear to be a linear relationship between​ companies' earnings per share and their dividends per share (e) ​Use the table of critical values for the Pearson correlation coefficient to make a conclusion about the correlation coefficient. Let α=0.01. The critical value is .917. ​Therefore, there is not sufficient evidence at the 1​% level of significance to conclude that there is a significant linear correlation between​ companies' earnings per share and their dividends per share.

9.1 hw 10 The accompanying table shows the ages​ (in years) of 11 children and the numbers of words in their vocabulary. Complete parts​ (a) through​ (d) below. ​Age, x 1 2 3 4 5 6 3 5 2 4 6 Vocabulary​ size, y 5 270 530 1100 1900 2700 560 2100 240 1400 2400

STAT EDIT LineReg (ax+b) (a) Display the data in a scatter plot STAT EDIT L1 & L2 zoom 9 (see image) (b) Calculate the sample correlation coefficient r STAT CALC 4: LineReg (ax+b) r = .978 ​(c) Describe the type of​ correlation, if​ any, and interpret the correlation in the context of the data. There is a strong positive linear correlation. (d) Interpret the correlation As age​ increases, the number of words in​ children's vocabulary tends to increase. (e) ​Use the table of critical values for the Pearson correlation coefficient to make a conclusion about the correlation coefficient. Let α=0.01. The critical value is .735. ​Therefore, there is sufficient evidence at the 1​% level of significance to conclude that there is a significant linear correlation between​ children's ages and the number of words in their vocabulary.

9.1 hw 15 The maximum weights​ (in kilograms) for which one repetition of a half squat can be performed and the times​ (in seconds) to run a​ 10-meter sprint for 12 international soccer players are shown in the attached data table with a sample correlation coefficient r of −0.956. A 13th data point was added to the end of the data set for an international soccer player who can perform the half squat with a maximum of 205 kilograms and can sprint 10 meters in 2.01 seconds. Describe how this affects the correlation coefficient r. Use technology Maximum weight​, xterm-7 170 175 160 205 155 185 185 155 195 185 160 165 205 ​Time, y 1.82 1.77 2.06 1.43 2.04 1.61 1.72 1.89 1.59 1.63 1.99 1.92 2.01

STAT EDIT LineReg (ax+b) STAT EDIT L1 & L2 STAT CALC 4: LineReg (ax+b) r = -.657 The new correlation coefficient r gets weaker, going from -0.956 to -.657

9.1 hw 14 The ages​ (in years) of 10 men and their systolic blood pressures​ (in millimeters of​ mercury) are shown in the attached data table with a sample correlation coefficient r of 0.915. Remove the data entry for the man who is 49 years old and has a systolic blood pressure of 199 millimeters of mercury from the data set and find the new correlation coefficient. Describe how this affects the correlation coefficient r. Use technology. Age, x 17 27 37 44 49 63 68 32 57 23 Systolic blood​ pressure, y 111 122 143 134 199 184 198 132 176 117

STAT EDIT LineReg (ax+b) STAT EDIT L1 & L2 remove 49 & 199 STAT CALC 4: LineReg (ax+b) r = .976 The new correlation coefficient r gets stronger, going from 0.915 to .976

9.1 hw 18 The maximum weights​ (in kilograms) for which one repetition of a​ half-squat can be performed and the jump heights​ (in centimeters) for 12 international soccer players are given in the accompanying table. The correlation​ coefficient, rounded to three decimal​ places, is r=0.734. At α=0.05​, is there enough evidence to conclude that there is a significant linear correlation between the​ variables? Maximum​ weight, x 190 185 155 180 175 170 150 160 160 180 190 210 Jump​ height, y 61 57 53 59 56 65 51 50 49 58 58 63

STAT EDIT PRGM InvT (custom) LinRegTtest (a) Determine the null and alternative hypotheses. Ho: ρ = 0 Ha​: ρ ≠ 0 2 tailed test (b) Identify the critical​ value(s). Select the correct choice below and fill in any answer boxes within your choice. PRGM InvT AREA LEFT: .025 (.05/2) DF: 10 (n-2) −tₒ = −2.228 and tₒ = 2.228 (c) Calculate the test statistic. STAT TEST E: LinRegTtest (y=a+bx) t = 3.421 (d) Conclusion Reject H0. There is enough evidence at the 5​% level of significance to conclude that there is a significant linear correlation between the maximum weight for one repetition of a half squat and the jump height.

9.1 hw 16 The weights​ (in pounds) of 6 vehicles and the variability of their braking distances​ (in feet) when stopping on a dry surface are shown in the table. Can you conclude that there is a significant linear correlation between vehicle weight and variability in braking distance on a dry​ surface? Use α=0.05. ​Weight, x 5920 5370 6500 5100 5870 4800 Variability in braking​ distance, y 1.71 1.95 1.91 1.56 1.62 1.50

STAT EDIT PRGM InvT (custom) LinRegTtest (a) Setup the hypothesis for the test. Ho: ρ = 0 Ha​: ρ ≠ 0 2 tailed test (b) Identify the critical​ value(s). PRGM InvT AREA LEFT: .025 (.05/2) DF: 4 (n-2) −tₒ = −2.776 and tₒ = 2.776. (c) Calculate the test statistic. STAT TEST E: LinRegTtest (y=a+bx) t = 1.484 (d) Conclusion There is not enough evidence at the 5​% level of significance to conclude that there is a significant linear correlation between vehicle weight and variability in braking distance on a dry surface.

9.1 hw 17 The number of hours 10 students spent studying for a test and their scores on that test are shown in the table. Is there enough evidence to conclude that there is a significant linear correlation between the​ data? Use α=0.01. ​ Hours, x 0 1 2 4 4 5 5 6 7 8 Test​ score, y 38 40 55 53 63 66 73 72 81 91

STAT EDIT PRGM InvT (custom) LinRegTtest (a) Setup the hypothesis for the test. Ho: ρ = 0 Ha​: ρ ≠ 0 2 tailed test (b) Identify the critical​ value(s). Select the correct choice below and fill in any answer boxes within your choice. PRGM InvT AREA LEFT: .005 (.01/2) DF: 8 (n-2) −tₒ = −3.355 and tₒ = 3.355. (c) Calculate the test statistic. STAT TEST E: LinRegTtest (y=a+bx) t = 10.65 (d) Conclusion There is enough evidence at the 5​% level of significance to conclude that there is a significant linear correlation between hours spent studying and test score.hours spent studying and test score.


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