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Author Question: For finite populations, the formula used for calculating the standard error of the sampling ... (Read 98 times)

CharlieWard

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For finite populations, the formula used for calculating the standard error of the sampling distribution of the mean must be modified by the _______________.
 a. inverse square law
  b. standard deviation
  c. finite correction factor
  d. sample mean  the confidence interval

Question 2

A category split means respondents below the observed median go into one category and respondents above the median go into another.
 
 Indicate whether the statement is true or false



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ms_sulzle

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Answer to Question 1

C
With finite populations, the standard error of the sampling distribution is modified based on the size of the population.

Answer to Question 2

F
This is called a median split.




CharlieWard

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Reply 2 on: Jun 29, 2018
Thanks for the timely response, appreciate it


EAN94

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Reply 3 on: Yesterday
Great answer, keep it coming :)

 

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