Chapter 10 Parameter Estimation Alternatives to Hypothesis Testing

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Chapter 10 Parameter Estimation

Chapter 10 Parameter Estimation

Alternatives to Hypothesis Testing? Some people say that the analysis I just presented, as

Alternatives to Hypothesis Testing? Some people say that the analysis I just presented, as well as some other things, is ample enough evidence to reject (ha ha) null hypothesis testing altogether, and opt for l Parameter estimation l

Parameter estimation l l l Point estimation The question for point/parameter estimation, is: can

Parameter estimation l l l Point estimation The question for point/parameter estimation, is: can we guess μ? Note that with hypothesis testing, we conclude (hopefully) that the probability of our results is low given that the null is true But, we can always draw the incorrect conclusion With point/parameter estimation, we specify value(s) which are likely to include μ

Point estimation l What’s the best single estimate of μX (the population mean of

Point estimation l What’s the best single estimate of μX (the population mean of the distribution from which we pulled our sample)? l The sample mean is known as the “unbiased estimate of the population mean” “unbiased” because it neither systematically underestimates nor overestimates the population mean l

Biased Estimates l The best estimate for population variance, is sample variance:

Biased Estimates l The best estimate for population variance, is sample variance:

Biased Estimates l The formula for population variance is: l But, when used to

Biased Estimates l The formula for population variance is: l But, when used to calculate sample variance, it overestimates the value, systematically, by a factor of 1 in the denominator, hence the term n-1

Point estimation How good an estimate of μ is MX? l It’s the best,

Point estimation How good an estimate of μ is MX? l It’s the best, man. l Yeah, but, it probably isn’t μ. l So, what’s your point? l

Parameter Estimation Specifies a range of values, we call the “confidence interval” l Then

Parameter Estimation Specifies a range of values, we call the “confidence interval” l Then we can express with some degree of “confidence” that our interval contains μ l Typically, people use 95% or 99% confidence intervals l

Method 1. State and Check Assumptions l 2. Set Confidence Level l 3. Obtain

Method 1. State and Check Assumptions l 2. Set Confidence Level l 3. Obtain Independent Random Sample l 4. Construct Confidence Interval l 5. Interpret the Interval l

An Illustration l l l One troubling aspect of IQ tests is that mean

An Illustration l l l One troubling aspect of IQ tests is that mean IQ scores increase with time. That is, when a new IQ test comes out, scores on the test systematically increase over the years until they are “restandardized. ” After this standardization, mean IQ scores increase again. – Cultural bias? – Teaching to the test? – Tester expectations?

A school psychologist… l l l Doesn’t trust the standards specified in the testing

A school psychologist… l l l Doesn’t trust the standards specified in the testing materials (because it is an old test), namely that μ = 100 She thinks that the standard deviation is probably unchanged, however (σ = 16) In this case, then, a hypothesis test that includes μ > 100 might be meaningless because we would expect the scores to increase with time anyways

Can we estimate μ? The school psychologist opts to estimate μ instead l With

Can we estimate μ? The school psychologist opts to estimate μ instead l With this information, she can compare schools, grade levels, etc. , because she has a good estimate of μ l She selects 25 4 th graders randomly from her district and gives them an IQ test, l

Parameter Estimation l 1. State and check assumptions – Assumptions about the population Normally

Parameter Estimation l 1. State and check assumptions – Assumptions about the population Normally distributed – yes l Variance - μ is known (16) l – Assumption about the data l Interval/Ratio level - OK – Assumptions about the sample l Independent random sample – got it

Parameter Estimation l 2. Set a confidence level α =. 05 1 – α

Parameter Estimation l 2. Set a confidence level α =. 05 1 – α =. 95

Parameter Estimation l 3. Independent random sample – Got it

Parameter Estimation l 3. Independent random sample – Got it

Parameter Estimation l 4. Construct confidence interval

Parameter Estimation l 4. Construct confidence interval

Parameter Estimation

Parameter Estimation

Parameter Estimation

Parameter Estimation

Parameter Estimation l Thus, the 95% confidence interval is 99. 728 ≤ μ ≤

Parameter Estimation l Thus, the 95% confidence interval is 99. 728 ≤ μ ≤ 112. 272

Parameter Estimation l 5. Interpret the confidence interval The probability is. 95 that the

Parameter Estimation l 5. Interpret the confidence interval The probability is. 95 that the interval 99. 728 – 112. 272 includes μ Our interpretation, though, is about the interval, not μ It would be incorrect to say that we have a 95% chance that μ is within the interval 99. 728 – 112. 272 μ doesn’t change, but MX does, as does the confidence interval from sample to sample