Concept explainers
Basic Computation: Normal Approximation to a Binomial Distribution Suppose we have a binomial experiment with n = 40 trials and
(a) Is it appropriate to use a normal approximation to this binomial distribution? Why?
(b) Compute
(c) Use a continuity correction factor to convert the statement r< 30 successes to a statement about the corresponding normal variable x.
(d) Estimate
(e) Interpretation Is it unusual for a binomial experiment with 40 trials and probability of success 0.85 to have fewer than 30 successes? Explain.
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Chapter 7 Solutions
Understanding Basic Statistics
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