What conditions are necessary to use the z-test for testing the difference between two population proportions?
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- 1. Intro to Stats and Collecting Data1h 14m
- 2. Describing Data with Tables and Graphs1h 55m
- 3. Describing Data Numerically2h 5m
- 4. Probability2h 16m
- 5. Binomial Distribution & Discrete Random Variables3h 6m
- 6. Normal Distribution and Continuous Random Variables2h 11m
- 7. Sampling Distributions & Confidence Intervals: Mean3h 23m
- Sampling Distribution of the Sample Mean and Central Limit Theorem19m
- Distribution of Sample Mean - Excel23m
- Introduction to Confidence Intervals15m
- Confidence Intervals for Population Mean1h 18m
- Determining the Minimum Sample Size Required12m
- Finding Probabilities and T Critical Values - Excel28m
- Confidence Intervals for Population Means - Excel25m
- 8. Sampling Distributions & Confidence Intervals: Proportion1h 25m
- 9. Hypothesis Testing for One Sample3h 29m
- 10. Hypothesis Testing for Two Samples4h 50m
- Two Proportions1h 13m
- Two Proportions Hypothesis Test - Excel28m
- Two Means - Unknown, Unequal Variance1h 3m
- Two Means - Unknown Variances Hypothesis Test - Excel12m
- Two Means - Unknown, Equal Variance15m
- Two Means - Unknown, Equal Variances Hypothesis Test - Excel9m
- Two Means - Known Variance12m
- Two Means - Sigma Known Hypothesis Test - Excel21m
- Two Means - Matched Pairs (Dependent Samples)42m
- Matched Pairs Hypothesis Test - Excel12m
- 11. Correlation1h 24m
- 12. Regression1h 50m
- 13. Chi-Square Tests & Goodness of Fit2h 21m
- 14. ANOVA1h 57m
10. Hypothesis Testing for Two Samples
Two Proportions
Problem 8.4.3
Textbook Question
In Exercises 3–6, determine whether a normal sampling distribution can be used. If it can be used, test the claim about the difference between two population proportions and at the level of significance . Assume the samples are random and independent.
Claim: p1≠p2, α=0.01
Sample statistics: x1=35, n1=70, and x2=36, n2=60
Verified step by step guidance1
Step 1: Verify the conditions for using a normal sampling distribution. Check if the sample sizes are large enough by ensuring that both np and n(1-p) are greater than or equal to 5 for each sample. For each sample, calculate p̂ (sample proportion) as p̂ = x/n, where x is the number of successes and n is the sample size.
Step 2: Calculate the pooled sample proportion (p̂_pooled) since the null hypothesis assumes p1 = p2. Use the formula: p̂_pooled = (x1 + x2) / (n1 + n2), where x1 and x2 are the number of successes, and n1 and n2 are the sample sizes.
Step 3: Compute the standard error (SE) for the difference in proportions using the formula: SE = sqrt(p̂_pooled * (1 - p̂_pooled) * (1/n1 + 1/n2)).
Step 4: Calculate the test statistic (z) for the difference in proportions using the formula: z = (p̂1 - p̂2) / SE, where p̂1 and p̂2 are the sample proportions for the two groups.
Step 5: Compare the calculated z-value to the critical z-value for a two-tailed test at the significance level α = 0.01. Alternatively, calculate the p-value and compare it to α. If the z-value falls outside the critical range or the p-value is less than α, reject the null hypothesis; otherwise, fail to reject it.
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Key Concepts
Here are the essential concepts you must grasp in order to answer the question correctly.
Normal Sampling Distribution
A normal sampling distribution is a probability distribution of sample means or proportions that approximates a normal distribution as the sample size increases, according to the Central Limit Theorem. For proportions, this approximation is valid when both np and n(1-p) are greater than 5, ensuring that the sample size is sufficiently large to yield reliable results.
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Difference Between Two Population Proportions
The difference between two population proportions involves comparing the proportions of a certain characteristic in two different populations. This is typically analyzed using a hypothesis test, where the null hypothesis states that the two proportions are equal, and the alternative hypothesis states they are not, allowing for statistical inference about the populations based on sample data.
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Difference in Proportions: Confidence Intervals
Level of Significance (α)
The level of significance, denoted as α, is the threshold for determining whether to reject the null hypothesis in a statistical test. It represents the probability of making a Type I error, which occurs when the null hypothesis is true but is incorrectly rejected. In this case, α is set at 0.01, indicating a 1% risk of concluding that a difference exists when there is none.
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