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Example: IQ Mean IQ = 100 Standard deviation = 15
What is the probability that a person you randomly bump into on the street has an IQ of 110 or higher?
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Step 1: Sketch out question
-3 -2 -1 1 2 3
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Step 1: Sketch out question
110 -3 -2 -1 1 2 3
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Step 2: Calculate Z score
( ) / 15 = .66 110 -3 -2 -1 1 2 3
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Step 3: Look up Z score in Table
Z = .66; Column C = .2546 110 .2546 -3 -2 -1 1 2 3
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Example: IQ You have a probability (or a 25.56% chance) of randomly bumping into a person with an IQ over 110.
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Now What is the probability that the next 5 people you bump into on the street will have a mean IQ score of 110? Notice how this is different!
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Population You are interested in the average self-esteem in a population of 40 people Self-esteem test scores range from 1 to 10.
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Population Scores 1,1,1,1 2,2,2,2 3,3,3,3 4,4,4,4 5,5,5,5 6,6,6,6 7,7,7,7 8,8,8,8 9,9,9,9 10,10,10,10
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Histogram
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What is the average self-esteem score of this population?
Population mean = 5.5 What if you wanted to estimate this population mean from a sample?
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Group Activity Randomly select 5 people and find the average score
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Group Activity Why isn’t the average score the same as the population score? When you use a sample there is always some degree of uncertainty! We can measure this uncertainty with a sampling distribution of the mean
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EXCEL
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Characteristics of a Sampling Distribution of the means
Every sample is drawn randomly from a population The sample size (n) is the same for all samples The mean is calculated for each sample The sample means are arranged into a frequency distribution (or histogram) The number of samples is very large
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INTERNET EXAMPLE
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Sampling Distribution of the Mean
Notice: The sampling distribution is centered around the population mean! Notice: The sampling distribution of the mean looks like a normal curve! This is true even though the distribution of scores was NOT a normal distribution
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Central Limit Theorem For any population of scores, regardless of form, the sampling distribution of the means will approach a normal distribution as the number of samples get larger. Furthermore, the sampling distribution of the mean will have a mean equal to and a standard deviation equal to / N
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Mean The expected value of the mean for a sampling distribution
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Standard Error The standard error (i.e., standard deviation) of the sampling distribution x = / N
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Standard Error The of an IQ test is 15. If you sampled 10 people and found an X = 105 what is the standard error of that mean? x = / N
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Standard Error The of an IQ test is 15. If you sampled 10 people and found an X = 105 what is the standard error of that mean? x = 15/ 10
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Standard Error The of an IQ test is 15. If you sampled 10 people and found an X = 105 what is the standard error of that mean? 4.74 = 15/ 3.16
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Standard Error The of an IQ test is 15. If you sampled 10 people and found an X = 105 what is the standard error of that mean? What happens to the standard error if the sample size increased to 50? 4.74 = 15/ 3.16
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Standard Error The of an IQ test is 15. If you sampled 10 people and found an X = 105 what is the standard error of that mean? What happens to the standard error if the sample size increased to 50? 4.74 = 15/ 3.16 2.12 = 15/7.07
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Standard Error The bigger the sample size the smaller the standard error Makes sense!
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Question For an IQ test = 100 = 15
What is the probability that in a class the average IQ of 54 students will be below 95? Note: This is different then the other “z” questions!
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Z score for a sample mean
Z = (X - ) / x
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Step 1: Sketch out question
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Step 2: Calculate the Standard Error
15 / 54 = 2.04
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Step 3: Calculate the Z score
( ) / 2.04 = -2.45
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Step 4: Look up Z score in Table
Z = -2.45; Column C =.0071 .0071
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Question From a sample of 54 students the probability that their average IQ score is 95 or lower is .0071
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