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Author Question: The normal approximation to the binomial distribution works best when the number of trials is large, ... (Read 69 times)

2125004343

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The normal approximation to the binomial distribution works best when the number of trials is large, and when the binomial distribution is symmetrical (like the normal).
  Indicate whether the statement is true or false

Question 2

A 90 confidence interval estimate for the population mean constructed with a small sample will have a margin of error that is approximately 90 of the population size n.
  Indicate whether the statement is true or false



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wfdfwc23

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Answer to Question 1

T

Answer to Question 2

T



2125004343

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Both answers were spot on, thank you once again




 

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