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IQ and Lead Exposure Data Set 7 鈥淚Q and Lead鈥 in Appendix B lists full IQ scores for a random sample of subjects with low lead levels in their blood and another random sample of subjects with high lead levels in their blood. The statistics are summarized on the top of the next page. Use a 0.05 significance level to test the claim that IQ scores of people with low lead

levels vary more than IQ scores of people with high lead levels.

Low Lead Level: n = 78, \(\bar x\) = 92.88462, s = 15.34451

High Lead Level: n = 21, \(\bar x\) = 86.90476, s = 8.988352

Short Answer

Expert verified

There is enough evidence to support the claim that IQ scores of people with low lead levels vary more than IQ scores of people with high lead levels.

Step by step solution

01

Given information

For a sample of 78 IQ scores with low blood lead levels, the mean value equals92.88462,and the standard deviation equals15.34451. In another sample of 21 IQ scores with high blood lead levels, the mean valueequals86.90476,and the standard deviationequals8.988352.

It is claimed that the variation in the IQ scores for low blood lead levels is more than the variation in the IQ scores for high blood lead levels.

02

Hypotheses

Let\({\sigma _1}\)and\({\sigma _2}\)be the population standard deviationsof the IQ scores for low blood lead levels high blood lead levels,respectively.

Nullhypothesis:The population standard deviation of the IQ scores for low blood lead levels is more than the variation in the IQ scores for high blood lead levels.

Symbolically,

\({H_0}:{\sigma _1} = {\sigma _2}\)

State the alternate hypotheses.

Since the original claim does not include equality, the alternate hypothesis\({H_1}\)represents the population variance of the low lead level is greater than the population variance of the high lead level.

Symbolically,

\({H_1}:{\sigma _1} > {\sigma _2}\)

03

Compute the test statistic for the t-test.

Since two independent samples involve a claim about the population standard deviation, apply an F-test.

Consider the larger sample variance to be\(s_1^2\)and the corresponding sample size to be\({n_1}\).

The following values are obtained:

\({\left( {15.34451} \right)^2} = 235.454\)

\({\left( {8.988352} \right)^2} = 80.790\)

Here,\(s_1^2\)is the sample variance corresponding to low blood lead levels and has a value equal to 235.454.

\(s_2^2\)is the sample variance corresponding to high blood lead levels and has a value equal to 80.790.

Substitute the respective values to calculate the F statistic:

\(\begin{array}{c}F = \frac{{{{\left( {15.34451} \right)}^2}}}{{{{\left( {8.988352} \right)}^2}}}\\ = 2.914\end{array}\)

Thus, F is equal to 2.914.

04

Critical value and p-value

The value of the numerator degrees of freedom is equal tothe following:

\(\begin{array}{c}{n_1} - 1 = 78 - 1\\ = 77\end{array}\)

The value of the denominator degrees of freedom is equal tothe following:

\(\begin{array}{c}{n_2} - 1 = 21 - 1\\ = 20\end{array}\)

For the F test, the critical value corresponding to the right-tail is considered.

The critical value can be obtained using the F-distribution table with numerator degrees of freedom equal to 77 and denominator degrees of freedom equal to 20 for a right-tailed test.

The level of significance is equal to 0.05.

Thus, the critical value is equal to 1.9246.

The two-tailed p-value for F equal to 2.914 is equal to 0.0045.

05

Conclusion

Since the test statistic value is greater than the critical value and the p-value is less than 0.05, the null hypothesis is rejected.

Thus, there is enough evidence to supportthe claimthat IQ scores of people with low lead levels vary more than IQ scores of people with high lead levels.

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Most popular questions from this chapter

Using Confidence Intervals

a. Assume that we want to use a 0.05 significance level to test the claim that p1 < p2. Which is better: A hypothesis test or a confidence interval?

b. In general, when dealing with inferences for two population proportions, which two of the following are equivalent: confidence interval method; P-value method; critical value method?

c. If we want to use a 0.05 significance level to test the claim that p1 < p2, what confidence level should we use?

d. If we test the claim in part (c) using the sample data in Exercise 1, we get this confidence interval: -0.000508 < p1 - p2 < - 0.000309. What does this confidence interval suggest about the claim?

Using Confidence Intervals

a. Assume that we want to use a 0.05 significance level to test the claim that p1 < p2. Which is better: A hypothesis test or a confidence interval?

b. In general, when dealing with inferences for two population proportions, which two of the following are equivalent: confidence interval method; P-value method; critical value method?

c. If we want to use a 0.05 significance level to test the claim that p1 < p2, what confidence level should we use?

d. If we test the claim in part (c) using the sample data in Exercise 1, we get this confidence interval: -0.000508 < p1 - p2 < - 0.000309. What does this confidence interval suggest about the claim?

In Exercises 5鈥16, use the listed paired sample data, and assume that the samples are simple random samples and that the differences have a distribution that is approximately normal.

Heights of Mothers and Daughters Listed below are heights (in.) of mothers and their first daughters. The data are from a journal kept by Francis Galton. (See Data Set 5 鈥淔amilyHeights鈥 in Appendix B.) Use a 0.05 significance level to test the claim that there is no difference in heights between mothers and their first daughters.

Height of Mother

68

60

61

63.5

69

64

69

64

63.5

66

Height of Daughter

68.5

60

63.5

67.5

68

65.5

69

68

64.5

63

In Exercises 5鈥20, assume that the two samples are independent simple random samples selected from normally distributed populations, and do not assume that the population standard deviations are equal. (Note: Answers in Appendix D include technology answers based on Formula 9-1 along with 鈥淭able鈥 answers based on Table A-3 with df equal to the smaller of\({n_1} - 1\)and\({n_2} - 1\).)

IQ and Lead Exposure Data Set 7 鈥淚Q and Lead鈥 in Appendix B lists full IQ scores for a random sample of subjects with low lead levels in their blood and another random sample of subjects with high lead levels in their blood. The statistics are summarized below.

a. Use a 0.05 significance level to test the claim that the mean IQ score of people with low blood lead levels is higher than the mean IQ score of people with high blood lead levels.

b. Construct a confidence interval appropriate for the hypothesis test in part (a).

c. Does exposure to lead appear to have an effect on IQ scores?

Low Blood Lead Level: n = 78, \(\bar x\) = 92.88462, s = 15.34451

High Blood Lead Level: n = 21,\(\bar x\)= 86.90476, s = 8.988352

Body TemperaturesListed below are body temperatures from seven different subjects measuredat two different times in a day (from Data Set 3 鈥淏ody Temperatures鈥 in Appendix B).

a.Use a 0.05 significance level to test the claim that there is no difference between body temperaturesmeasured at 8 AM and at 12 AM.

b.Construct the confidence interval that could be used for the hypothesis test described in part(a). What feature of the confidence interval leads to the same conclusion reached in part (a)

Body Temperature\(\left( {^{\bf{0}}{\bf{F}}} \right)\) at 8AM

96.6

97.0

97.0

97.8

97.0

97.4

96.6

Body Temperature\(\left( {^{\bf{0}}{\bf{F}}} \right)\) at 12AM

99.0

98.4

98.0

98.6

98.5

98.9

98.4

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