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Stat 217 – Day 18 t-procedures (Topics 19 and 20)
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Last Time – Sampling Distn for Mean Penny ages Population Sample (n = 30) Sampling distribution Change Population Sample (n = 30) Sampling distribution Obs unit = sample Variable = sample mean
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Last Time – Distribution of x-bar Central Limit Theorem for Sample Mean (p. 282) 1. Sampling distribution is (approximately) normal 2. Sampling distribution mean equals population mean 3. Sampling distribution standard deviation equals / n Technical conditions 1. Random sample 2. Either large sample (n>30) or normal population (be told or look at sample)
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Activity 15-5 (p. 300) Ethan Allen October 5, 2005 Are several explanations, could excess passenger weight be one?
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Activity 15-5 (p. 300) The boat can hold a total of 7500 lbs (or an average of 159.57 lbs over 47 passengers) CDC: weights of adult Americans have a mean of 167 lbs and SD 35 lbs. What’s the probability the average weight of 47 passengers will exceed 159.57 lbs?
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Activity 15-5 What’s the probability the average weight of 47 passengers will exceed 159.57 lbs? n > 30 so we can apply the CLT 1. Shape is approximately normal 2. mean will equal 167 lbs 3. standard deviation = 35/ 47 = 5.105 lbs Z = (159.57-167)/5.105 = -1.46 Above:.9272 93% chance of an overweight boat!
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One small problem We don’t usually know the population standard deviation
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Informally A conjecture for the value of is not plausible if it falls more than 2 SD = 2 / n from the observed sample mean ( ) Standardize: Small problem: don’t know either! Easy solution? “standard error”
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Demo Suppose we have a population with mean = 10 and standard deviation = 5. What does the sampling distribution of samples of size n=5 look like?
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Demo, cont. What really matters is the distribution of the standardized values But what happens if we use s instead of ?
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t distribution (p. 376) The “t distribution” is symmetric and mound-shaped like the normal distribution but has “heavier” tails Models the extra variation we have with the additional estimation of by s t distribution
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t distribution (p. 376) A family of distributions, characterized by “degrees of freedom” (df) df = n – 1 As df increases, the heaviness of the tails decreases and the t distribution looks more and more like the normal distribution Less penalty for estimating with s
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Activity 20-1 (p. 394)
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Two Central Limit Theorems (p. 295) Categorical (p-hat) Mean = SD = (1- )/n Shape = approx normal if n > 10 and n(1- ) > 10 Random sample Quantitative (x-bar) Mean = SD = / n Shape = normal if population normal or approximately normal if n > 30 Random sample
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To turn in, with partner Activity 20-1 (m) (n) (o) Handout (f) and (g) For Wednesday HW 5 Activities 19-6, 20-3, 20-4 Be working on Lab 6
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