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Essential Statistics Inference about a Population Proportion

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1 Essential Statistics Inference about a Population Proportion
Chapter 18 Inference about a Population Proportion Essential Statistics Chapter 18 Chapter 18

2 Proportions The proportion of a population that has some outcome (“success”) is p. The proportion of successes in a sample is measured by the sample proportion: “p-hat” Essential Statistics Chapter 18

3 Inference about a Proportion Simple Conditions
Essential Statistics Chapter 18

4 Inference about a Proportion Sampling Distribution
Essential Statistics Chapter 18

5 Comparing Fingerprint Patterns
Case Study Comparing Fingerprint Patterns Science News, Jan. 27, 1995, p. 451. Essential Statistics Chapter 18

6 Case Study: Fingerprints
Fingerprints are a “sexually dimorphic trait…which means they are among traits that may be influenced by prenatal hormones.” It is known… Most people have more ridges in the fingerprints of the right hand. (People with more ridges in the left hand have “leftward asymmetry.”) Women are more likely than men to have leftward asymmetry. Compare fingerprint patterns of heterosexual and homosexual men. Essential Statistics Chapter 18

7 Case Study: Fingerprints Study Results
66 homosexual men were studied. 20 (30%) of the homosexual men showed leftward asymmetry. 186 heterosexual men were also studied. 26 (14%) of the heterosexual men showed leftward asymmetry. Essential Statistics Chapter 18

8 Case Study: Fingerprints A Question
Assume that the proportion of all men who have leftward asymmetry is 15%. Is it unusual to observe a sample of 66 men with a sample proportion ( ) of 30% if the true population proportion (p) is 15%? Essential Statistics Chapter 18

9 Case Study: Fingerprints Sampling Distribution
Essential Statistics Chapter 18

10 Case Study: Fingerprints Answer to Question
Where should about 95% of the sample proportions lie? mean plus or minus two standard deviations 0.15  2(0.044) = 0.062 (0.044) = 0.238 95% should fall between & 0.238 It would be unusual to see 30% with leftward asymmetry (30% is not between 6.2% & 23.8%). Essential Statistics Chapter 18

11 Standardized Sample Proportion
Inference about a population proportion p is based on the z statistic that results from standardizing : z has approximately the standard normal distribution as long as the sample is not too small. Essential Statistics Chapter 18

12 Building a Confidence Interval Population Proportion
Essential Statistics Chapter 18

13 Standard Error Since the population proportion p is unknown, the standard deviation of the sample proportion will need to be estimated by substituting for p. Essential Statistics Chapter 18

14 Confidence Interval Essential Statistics Chapter 18

15 Case Study: Soft Drinks
A certain soft drink bottler wants to estimate the proportion of its customers that drink another brand of soft drink on a regular basis. A random sample of 100 customers yielded 18 who did in fact drink another brand of soft drink on a regular basis. Compute a 95% confidence interval (z* = 1.960) to estimate the proportion of interest. Essential Statistics Chapter 18

16 Case Study: Soft Drinks
We are 95% confident that between 10.5% and 25.5% of the soft drink bottler’s customers drink another brand of soft drink on a regular basis. Essential Statistics Chapter 18

17 Choosing the Sample Size
Essential Statistics Chapter 18

18 Case Study: Soft Drinks
Suppose a certain soft drink bottler wants to estimate the proportion of its customers that drink another brand of soft drink on a regular basis using a 99% confidence interval, and we are instructed to do so such that the margin of error does not exceed 1 percent (0.01). What sample size will be required to enable us to create such an interval? Essential Statistics Chapter 18

19 Case Study: Soft Drinks
Since no preliminary results exist, use p* = 0.5. Thus, we will need to sample at least of the soft drink bottler’s customers. Note that since we cannot sample a fraction of an individual and using customers will yield a margin of error slightly more than 1% (0.01), our sample size should be n = customers . Essential Statistics Chapter 18

20 The Hypotheses for Proportions
Essential Statistics The Hypotheses for Proportions Null: H0: p = p0 One sided alternatives Ha: p > p0 Ha: p < p0 Two sided alternative Ha: p ¹ p0 Essential Statistics Chapter 18 Chapter 18

21 Test Statistic for Proportions
Start with the z statistic that results from standardizing : Assuming that the null hypothesis is true (H0: p = p0), we use p0 in the place of p: Essential Statistics Chapter 18

22 P-value for Testing Proportions
Ha: p > p0 P-value is the probability of getting a value as large or larger than the observed test statistic (z) value. Ha: p < p0 P-value is the probability of getting a value as small or smaller than the observed test statistic (z) value. Ha: p ≠ p0 P-value is two times the probability of getting a value as large or larger than the absolute value of the observed test statistic (z) value. Essential Statistics Chapter 18

23 Essential Statistics Chapter 18

24 What are parents’ attitudes and practices on discipline?
Essential Statistics Case Study Parental Discipline Brown, C. S., (1994) “To spank or not to spank.” USA Weekend, April 22-24, pp. 4-7. What are parents’ attitudes and practices on discipline? Essential Statistics Chapter 18 Chapter 18

25 Case Study: Discipline
Essential Statistics Case Study: Discipline Scenario Nationwide random telephone survey of 1,250 adults that covered many topics 474 respondents had children under 18 living at home results on parental discipline are based on the smaller sample reported margin of error 5% for this smaller sample Essential Statistics Chapter 18 Chapter 18

26 Case Study: Discipline
Essential Statistics Case Study: Discipline Reported Results “The 1994 survey marks the first time a majority of parents reported not having physically disciplined their children in the previous year. Figures over the past six years show a steady decline in physical punishment, from a peak of 64 percent in 1988.” The 1994 sample proportion who did not spank or hit was 51% ! Is this evidence that a majority of the population did not spank or hit? (Perform a test of significance.) Essential Statistics Chapter 18 Chapter 18

27 Case Study: Discipline
Essential Statistics Case Study: Discipline The Hypotheses Null: The proportion of parents who physically disciplined their children in 1993 is the same as the proportion [p] of parents who did not physically discipline their children. [H0: p = 0.50] Alt: A majority (more than 50%) of parents did not physically discipline their children in [Ha: p > 0.50] Essential Statistics Chapter 18 Chapter 18

28 Case Study: Discipline
Essential Statistics Case Study: Discipline Test Statistic Based on the sample n = 474 (large, so proportions follow Normal distribution) no physical discipline: 51% standard error of p-hat: (where .50 is p0 from the null hypothesis) standardized score (test statistic) z = ( ) / = 0.43 Essential Statistics Chapter 18 Chapter 18

29 Case Study: Discipline
Essential Statistics Case Study: Discipline P-value P-value = z = 0.43 0.500 0.523 0.477 0.546 0.454 0.569 0.431 1 -1 2 -2 3 -3 z: From Table A, z = 0.43 is the 66.64th percentile. Essential Statistics Chapter 18 Chapter 18

30 Case Study: Discipline
Hypotheses: H0: p = Ha: p > 0.50 Test Statistic: P-value: P-value = P(Z > 0.43) = 1 – = Conclusion: Since the P-value is larger than a = 0.10, there is no strong evidence that a majority of parents did not physically discipline their children during 1993. Essential Statistics Chapter 18


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