Respuesta :
Answer:
Option C
Step-by-step explanation:
The central Limit Theorem says the sampling distribution of the sample mean is approximately normal under certain conditions
The conditions are
i) the population should be symmetrial. If population is skewed sample size should be sufficiently large atleast 30
ii) Samples should be drawn strictly at random
iii) the sample observations should be independent
Thus we find that option a is not necessary because even for skewed large sample size allows the theorem
Option b is not correct since if population is less than 30, sampling itself is not necessary.
Option d is also wrong since normality is not necessary
Only option C) The sample size must be large (e.g., at least 30) is the necessary condition
Answer:
c) The sample size must be large (e.g., at least 30)
Step-by-step explanation:
Central Limit theorem states that : If population has well defined & finite mean & variance, even if it is skewed - the sampling distribution of sample mean will tend to 'normal distribution', as the number of samples increase.
The sampling distribution shape will approach to 'normality' as sample size (N) increase. The sample size must be atleast 30 for this case.