Here are the essential concepts you must grasp in order to answer the question correctly.
Chi-Square Test of Independence
The Chi-Square Test of Independence is a statistical method used to determine if there is a significant association between two categorical variables. In this case, it assesses whether gender (male or female) is independent of the response to the ghost sighting question (yes or no). The test compares the observed frequencies in each category to the expected frequencies if there were no association.
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Significance Level (Alpha)
The significance level, often denoted as alpha (α), is the threshold for determining whether a result is statistically significant. Common levels are 0.01 and 0.05, indicating a 1% and 5% risk of concluding that a difference exists when there is none. Changing the significance level affects the likelihood of rejecting the null hypothesis, which in this case is that gender and ghost sightings are independent.
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Step 4: State Conclusion Example 4
Null and Alternative Hypotheses
In hypothesis testing, the null hypothesis (H0) represents the default position that there is no effect or association, while the alternative hypothesis (H1) suggests that there is an effect or association. For this question, H0 posits that gender is independent of ghost sighting responses, while H1 suggests that there is a dependence between the two variables. The outcome of the test will either support or reject the null hypothesis based on the calculated p-value.
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