Exact Method For each of the three different methods of hypothesis testing (identified in the left column), enter the P-values corresponding to the given alternative hypothesis and sample data. Use a 0.05 significance level. Note that the entries in the last column correspond to the Chapter Problem. How do the results agree with the large sample size?
Table of contents
- 1. Intro to Stats and Collecting Data55m
- 2. Describing Data with Tables and Graphs1h 55m
- 3. Describing Data Numerically1h 45m
- 4. Probability2h 16m
- 5. Binomial Distribution & Discrete Random Variables2h 33m
- 6. Normal Distribution and Continuous Random Variables1h 38m
- 7. Sampling Distributions & Confidence Intervals: Mean1h 53m
- 8. Sampling Distributions & Confidence Intervals: Proportion1h 12m
- 9. Hypothesis Testing for One Sample2h 19m
- 10. Hypothesis Testing for Two Samples3h 26m
- 11. Correlation1h 6m
- 12. Regression1h 35m
- 13. Chi-Square Tests & Goodness of Fit1h 57m
- 14. ANOVA1h 0m
9. Hypothesis Testing for One Sample
Performing Hypothesis Tests: Proportions
Problem 8.5.5
Textbook Question
Randomization: Testing a Claim About a Proportion
In Exercises 5–8, use the randomization procedure for the indicated exercise.
Section 8-2, Exercise 9 “Cursed Movie”

1
Step 1: Understand the problem. The goal is to test a claim about a proportion using a randomization procedure. Specifically, we are analyzing data related to the 'Cursed Movie' scenario from Section 8-2, Exercise 9. Review the claim and the data provided in the exercise to identify the null hypothesis (H₀) and the alternative hypothesis (H₁).
Step 2: Define the hypotheses. Typically, the null hypothesis (H₀) states that the proportion is equal to a specified value (e.g., p = p₀), while the alternative hypothesis (H₁) states that the proportion is different (e.g., p ≠ p₀, p > p₀, or p < p₀). Write these hypotheses clearly.
Step 3: Simulate randomization. To perform the randomization procedure, shuffle or resample the data under the assumption that the null hypothesis is true. This involves generating a large number of simulated samples where the proportion matches the null hypothesis value. Use statistical software or manual methods to perform this step.
Step 4: Calculate the test statistic for each simulated sample. The test statistic could be the sample proportion, the difference between proportions, or another relevant measure. Record the test statistic for each simulation.
Step 5: Compare the observed test statistic to the distribution of simulated test statistics. Determine the p-value by finding the proportion of simulated test statistics that are as extreme or more extreme than the observed test statistic. Use this p-value to decide whether to reject or fail to reject the null hypothesis based on the significance level (e.g., α = 0.05).

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Key Concepts
Here are the essential concepts you must grasp in order to answer the question correctly.
Randomization
Randomization is a statistical technique used to assign subjects to different groups in a way that eliminates bias. It ensures that each participant has an equal chance of being placed in any group, which helps to create comparable groups and allows for valid inferences about the population. In hypothesis testing, randomization can be used to simulate the distribution of a test statistic under the null hypothesis.
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Intro to Random Variables & Probability Distributions
Proportion
A proportion is a statistical measure that represents the fraction of a whole, often expressed as a percentage. In the context of hypothesis testing, it refers to the ratio of a specific outcome to the total number of observations. Understanding proportions is crucial when testing claims about population characteristics, as it helps to quantify the likelihood of observing certain results under different conditions.
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Difference in Proportions: Hypothesis Tests
Hypothesis Testing
Hypothesis testing is a method used to determine whether there is enough statistical evidence in a sample to infer that a certain condition holds true for the entire population. It involves formulating a null hypothesis (no effect or no difference) and an alternative hypothesis (indicating an effect or difference), followed by calculating a test statistic and comparing it to a critical value to make a decision. This process is essential for validating claims about proportions in statistical studies.
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Step 1: Write Hypotheses
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