(i)
The level of significance, null hypothesis and alternate hypothesis.
(ii)
To find: The sampling distribution that should be used along with assumptions and compute the value of the sample test statistic.
(iii)
To find: The critical value of the test statistic and sketch the sampling distribution showing the critical region.
(iv)
Whether we reject or fail to reject the null hypothesis and whether the data is statistically significant for a level of significance of 0.01.
(v)
The interpretation for the conclusion.
(vi)
The comparison for our conclusion with the conclusion obtained from the P-value method.
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Chapter 10 Solutions
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