Which of the following pairs correctly represent a valid null hypothesis and its corresponding alternative hypothesis for testing whether the mean of a population is equal to ?
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9. Hypothesis Testing for One Sample
Steps in Hypothesis Testing
Multiple Choice
Which of the following is not true when testing a claim about a population proportion?
A
The normal approximation can be used if both and are greater than 5.
B
The test statistic is calculated using the sample proportion and the hypothesized population proportion.
C
The null hypothesis is always that the population proportion is less than a specified value.
D
The sample should be randomly selected from the population.
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Verified step by step guidance1
Understand the context: When testing a claim about a population proportion, we typically set up a null hypothesis (H_0) and an alternative hypothesis (H_a) involving the population proportion p.
Recall the conditions for using the normal approximation to the binomial distribution: The sample size n and the hypothesized proportion p must satisfy both n \(\times\) p > 5 and n \(\times\) (1 - p) > 5 to ensure the sampling distribution of the sample proportion is approximately normal.
Know how the test statistic is calculated: The test statistic for a population proportion test is calculated using the formula \(Z = \frac{\hat{p} - p_0}{\sqrt{\frac{p_0 (1 - p_0)}{n}}}\), where \(\hat{p}\) is the sample proportion and \(p_0\) is the hypothesized population proportion under the null hypothesis.
Recognize the nature of the null hypothesis: The null hypothesis is usually an equality statement about the population proportion, such as \(H_0: p = p_0\), not an inequality like 'less than'. Inequalities are typically part of the alternative hypothesis.
Remember the importance of random sampling: The sample should be randomly selected from the population to ensure the validity of the inference and to avoid bias.
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