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Author Question: For a random sample of size n, the Central Limit Theorem states if n is sufficiently large then ... (Read 315 times)

asd123

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  For a random sample of size n, the Central Limit Theorem states if n is sufficiently large then the sample mean and the sample sum tend to
 

  a.have exponential distributions.
  b.have skewed distributions.
  c.be approximately normally distributed.
 

d.have standard deviations that are normally distributed.
 
 



Question 2


  If the sample size is increased, what will happen to the standard error of the sample mean?
 

  a.The standard error will remain the same.
  b.The standard deviation will increase.
  c.The standard deviation will decrease.
 

d.It depends on the data being studied.
 
 




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Jane

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Answer to Question 1

correct: c

Answer to Question 2

correct: c




asd123

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Reply 2 on: Jul 24, 2018
Great answer, keep it coming :)


ricroger

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Reply 3 on: Yesterday
Wow, this really help

 

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