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The Central Limit Theorem Rio Hondo College Teaching Demonstration Greg Miller 3/18/2011 Recall: Random Variables Let X be a random variable. Just to remind you what a random variable is, just think of it as the output of a procedure. Some procedure happens and the output (a number) is called X. Example 1 Recall: Random Variables Let X be a random variable. Just to remind you what a random variable is, just think of it as the output of a procedure. Some procedure happens and the output (a number) is called X. Example 1 Recall: Random Variables Each random variable comes with its own probability distribution. A probability distribution tells you any probability you want to know pertaining to your random variable. Recall: Random Variables Each random variable comes with its own probability distribution. A probability distribution tells you any probability you want to know pertaining to your random variable. Example 2 Procedure: Roll a single die once X= the number that is face up on the die. Recall: Random Variables Each random variable comes with its own probability distribution. A probability distribution tells you any probability you want to know pertaining to your random variable. Example 2 Procedure: Roll a single die once X= the number that is face up on the die. From this you can find any probability you care about, such as P(X=3) = 1/6 or P(X>1) = 5/6 The Random Variable X Let X be a random variable and define a NEW random variable X by running the X random variable’s procedure a few times and take the average of those results (the number of times X ’s procedure is run will depend on the problem) The Random Variable X Let X be a random variable and define a NEW random variable X by running the X random variable’s procedure a few times and take the average of those results (the number of times X ’s procedure is run will depend on the problem) Example 3 Run X’s procedure 3 times and X is the average of the 3 results. QUESTION: What is the distribution of the new random variable X ? QUESTION: What is the distribution of the new random variable X ? Example 4 Define the random variables X , X 2 , X 3 as follows: QUESTION: What is the distribution of the new random variable X ? Example 4 Define the random variables X , X 2 , X 3 as follows: X = number face up on a die if rolled once QUESTION: What is the distribution of the new random variable X ? Example 4 Define the random variables X , X 2 , X 3 as follows: X = number face up on a die if rolled once X 2 = mean of the face up numbers if the die is rolled 2 times QUESTION: What is the distribution of the new random variable X ? Example 4 Define the random variables X , X 2 , X 3 as follows: X = number face up on a die if rolled once X 2 = mean of the face up numbers if the die is rolled 2 times X 3 = mean of the face up numbers if the die is rolled 3 times QUESTION: What is the distribution of the new random variable X ? Example 4 Define the random variables X , X 2 , X 3 as follows: X = number face up on a die if rolled once X 2 = mean of the face up numbers if the die is rolled 2 times X 3 = mean of the face up numbers if the die is rolled 3 times QUESTION: What is the distribution of the new random variable X ? Example 4 Define the random variables X , X 2 , X 3 as follows: X = number face up on a die if rolled once X 2 = mean of the face up numbers if the die is rolled 2 times X 3 = mean of the face up numbers if the die is rolled 3 times Answer: Central Limit Theorem Let X be a random variable with any distribution whatsoever with mean standard deviation mean X X X X and . If n is very large, then the distribution of X is NORMAL with and standard deviation X X n . Answer: Central Limit Theorem Let X be a random variable with any distribution whatsoever with mean standard deviation mean X X X X and . If n is very large, then the distribution of X is NORMAL with and standard deviation X X n . Answer: Central Limit Theorem Let X be a random variable with any distribution whatsoever with mean standard deviation mean X X X X and . If n is very large, then the distribution of X is NORMAL with and standard deviation X X . n mean = X mean = standard deviation = X standard deviation = X X X X n Central Limit Theorem Rule of thumb: If n is larger than 30, then that is large enough for us to assume that the distribution of X is normal Exercises Exercise 1: The Coca-Cola company claims that the mean amount of soda in their cans is 12 ounces with a standard deviation of 0.5 ounces. a) If 100 cans of Coke are randomly selected, what is the probability that the mean amount of soda in them is less than 11.88 ounces? Exercises Exercise 1: The Coca-Cola company claims that the mean amount of soda in their cans is 12 ounces with a standard deviation of 0.5 ounces. a) If 100 cans of Coke are randomly selected, what is the probability that the mean amount of soda in them is less than 11.88 ounces? Answer: P = 0.0082 b) If 100 cans of Coke are randomly selected and the mean amount of soda in this sample is 11.84 ounces, what can you conclude? Exercises Exercise 1: The Coca-Cola company claims that the mean amount of soda in their cans is 12 ounces with a standard deviation of 0.5 ounces. a) If 100 cans of Coke are randomly selected, what is the probability that the mean amount of soda in them is less than 11.88 ounces? Answer: P = 0.0082 b) If 100 cans of Coke are randomly selected and the mean amount of soda in this sample is 11.84 ounces, what can you conclude? Answer: Their claim is most likely incorrect. Either their machines are not working properly or they are trying to cheat their customers. 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