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In: Statistics and Probability

a) state complete central limit theorem for means, including the three comclusions b) explain the difference...

a) state complete central limit theorem for means, including the three comclusions

b) explain the difference between a population, a sample and a sampling distribution

c) explain why we need a sampling dostribution and the central limit theorem to find a confidence interval when we only have one sample. (Hint. each conclusion of the central limit theorem plats an important role in confidence intervals)

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