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Published byŌἈπολλύων Τρικούπη Modified over 6 years ago
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From Simulations to the Central Limit Theorem
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Parameter: A number describing a characteristic of the population
(usually unknown) Statistic: A number describing a characteristic of a sample. Let’s review some vocabulary
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In Inferential Statistics we use the value of a sample statistic to estimate a parameter value.
POPULATION: ALL Montgomery College students and estimate their mean height
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We want to estimate the mean height of MC students.
Will x-bar be equal to mu? What if we had selected another sample? What is the variability of the x-bars about the mean mu? What if we get another sample, will x-bar be the same?
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What does the x-bar distribution look like?
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How do we investigate the behavior of x-bar?
WHY WORRIED ABOUT PROBABILITIES? In inferential statistics we test claims about population means by using probabilities
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Graph the x-bar distribution and find its mean and standard deviation
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Simulation Rolling a fair die and recording the outcome randInt(1,6)
Press MATH Go to PRB Select 5: randInt(1,6)
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Rolling a die n times and finding the mean of the outcomes.
Mean(randInt(1,6,10) Press 2nd STAT Right to MATH Select 3:mean Press MATH Right to PRB 5:randInt(
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Rolling a die n times and finding the mean of the outcomes.
The Central Limit Theorem in action Meaning of FAIR –SHAPE, MEAN, ST.DEV = Think now on the possible x-bars if n = 2, if n = 10
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Simulation Roll a die 5 times and record the number of ONES obtained: randInt(1,6,5) Press MATH Go to PRB Select 5: randInt(1,6,5)
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The Central Limit Theorem in action
Roll a die 5 times, record the number of ONES obtained. Do the process n times and find the mean number of ONES obtained. The Central Limit Theorem in action
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The Central Limit Theorem in action
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Use website APPLETS to simulate proportion problems
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