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Published byKelley Wilkerson Modified over 9 years ago
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12.1 Inference for A Population Proportion
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Calculate and analyze a one proportion z-test in order to generalize about an unknown population proportion.
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sample proportion- the statistic that estimates the parameter
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1=random sample 2=population is at least 10x sample 3=np≥10 n(1-p)≥10
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How do we standardize ? The standard error of : (this is when we calculate confidence intervals and we don’t know the true proportion so we use the sample proportion instead) SE=
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Therefore if our confidence interval has the form:
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To test H₀ based on an SRS of size n from a large population with unknown proportion p of successes. z test statistic:
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In terms of a variable z having the standard normal distribution, the p-value for a test of H₀ against If your Ha is >, you just shade above (z- score should be positive)
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If your Ha is <, you just shade below (z-score should be negative) If your Ha is ≠, you just shade both (you need to put a 2 in front of your calculations)
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Example 1: The French naturalist Count Buffon tossed a coin 4040 times. He got 2048 heads. Is there evidence that Buffon’s coin was unbalanced? Population: p=true proportion of heads when tossing Buffon’s coin Hypothesis: H₀: p=0.5 Ha: p≠0.5
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Assumptions: -random sample -population is at least 10x sample -np≥10n(1-p)≥10 2020 ≥10 2020≥10 (or you can use # of successes and failures) 2048 ≥101992 ≥10 Test: One proprotion z-test Alpha level: α=0.05
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Calculations: Decision & Statement: Since p∡α, it is not statistically significant, therefore we do not reject H₀. There is not enough evidence to say the coin is unbalanced.
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Example 2: Calculate a 95% confidence interval for the proportion of heads from Buffon’s coin flip. One proportion z interval Assumptions: same as above 0.5069 ± 0.01545= (0.49151, 0.52235) We are 95% confident that the true proportion of getting a head when flipping a coin is between 0.49 and 0.52
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Example 3: How many times would you need to toss a coin to estimate the proportion of heads within 95% confidence and a margin of error of 0.05? n≥384.16, therefore n=385
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In a test of H 0 : p = 0.3 against H a : p > 0.3, a sample of size 200 produces z = 2.51 for the value of the test statistic. Thus the P-value (or observed level of significance) of the test is approximately equal to? ***If you go to a one-prop z-test on your calculator to get the p-value, can you find it? (try it!!) No, we don’t know what to plug in for x (the number of successes in our sample)
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In a test of H 0 : p = 0.3 against H a : p 0.3, a sample of size 200 produces z = 2.51 for the value of the test statistic. Thus the P-value (or observed level of significance) of the test is approximately equal to? So what do we do? Remember if we know the z- score we can use normalcdf…. to find the area under a curve First, your Ha is >, so we want to shade above 2.51 Try using normalcdf to get the answer Normalcdf(2.51,1000,0,1)=0.006 There’s your p-value!!!!
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In a test of H 0 : p = 0.8 against H a : p ≠ 0.8, a sample of size 75 produces z = 1.15 for the value of the test statistic. Thus the P-value (or observed level of significance) of the test is approximately equal to? Normalcdf(1.15,1000,0,1)=0.125 But be careful, your Ha is ≠, so we only found the area above. Remember we have to shade above and below when Ha is ≠. So simply double it! 2(0.125)=0.25
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