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The Central Limit Theorem The Statement that follows is a special case of a more general theorem. If X is any random variable then X , the distribution of all possible sample means of size n, will have an approximate normal distribution so long as n is large enough. 2 That is X ~ N , n • The approximation will be good for n > 30 • The approximation will be good for n < 30 for distributions which are not far from Normal 2 • It could be stated that X ~ N , as n n → whatever the distribution of X. Example The scores in an aptitude test taken by a large number of students are normally distributed with a mean of 100 and variance 120. If random samples of 40 students were picked what would the mean, the variance and standard deviation (standard error) of X , the mean scores of the students samples? X = score on the test X ~ N(100, 120) Let X be the distribution of possiblesample means with size n 40 2 Using the CentralLimit Theorem: X N , n Mean μ 100 σ 2 120 Variance 3 n 40 σ2 StandardError 3 n A random variable X has f x 0.5 for 0 0 x2 elsewhere (i) Obtain the mean and variance of X A random sample of 48 observations is obtained from this distribution and the mean is computed. (ii) Obtain E X , var X and the standard error of X (iii) Describe the approximate distribution of X f x 0.5 for (i) ab 20 1 2 2 0 x2 1 1 1 2 2 b a 2 0 12 12 3 2 (ii) Let X be the distribution of possiblesample means with size n 48 2 Using the CentralLimit Theorem: X N , n E x 1 1 1 VAR x 2 3 48 144 STANDARD ERR0R x 2 N 1 1 144 12 1 Using the CentralLimit Theorem: X N 1, 144 Example The continuous random variable X is distributed with mean 25.8 and standard deviation 2.4. Use a distributional approximation to evaluate the probability that the mean of a random sample of 50 observations of X will be less than 26. X ~ N(25.8, 2.42) Let X be the distribution of possiblesample means with size n 50 2 Using the CentralLimit Theorem: X N , n Mean μ 25.8 σ 2 2.42 Variance 0.1152 n 50 Using the CLT: X N 25.8, 0.1152 approx Test Statistic: x 26 P x 26 approx = P(z < 0.59) = 0.7724 X μ 26 25.8 = 0.59 Z σ 0.1152 Example The discrete random variable X has the following distribution. X 1 2 3 P(x) 0.6 0.3 0.1 Find an approximate value for the probability that the mean of a random sample of 80 observations of X will be greater than 1.65. Example Find an approximate value for the probability that the mean score obtained in 30 throws of a fair cubical die will be 4 or more.