Sampling & Estimation. Normal Distribution Normal Sample.

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Sampling & Estimation
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Transcript of Sampling & Estimation. Normal Distribution Normal Sample.

Page 1: Sampling & Estimation. Normal Distribution Normal Sample.

Sampling & Estimation

Page 2: Sampling & Estimation. Normal Distribution Normal Sample.

Normal Distribution

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Normal Sample

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Binomial Distribution

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Estimation

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Sampling

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Sampling of the Mean

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The more observations the better!

Surprice!!!!!

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Sampling of the Variance

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Sampling of the proportion

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How accurate are these estimates?

Can we use that to report the uncertainty

in a clever way?

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Rule of

A random variable is very seldom more than two standard deviations away from the expected value.

A random variable is very seldom more than two standard deviations away from the expected value.

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… Ehh, we don’t know that one!

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Confidence Interval for the Mean when the variance is not know

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Confidence intervals for the variance

It looks like …..

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A 95% approximate interval for a proportion

Assume normality

BUT WHAT IF THIS INTERVAL

CONTAINS 0 OR 1?This would be possible if n is small, if p is nearly zero or if p is nearly one.

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Log-Transformation

Believe me!Assume normality

Use the expontial transformation, and write

But what if the interval contains

one?

This could happen if n is relatively small and p is nearly one.

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Logit-transformation

and it also looks like log(1-p), for p approx one.

Looks like the

log-transformation, for p small

To go the other way

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The function logit(p) The function expit(p)

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Logit-transformation

Assume normality

To get a 95% CI for p, we use the expit-transformation

Now we are happy!

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Why didn’t I just tell you about the logit-transformation in the first place?Because, when comparing proportions (risks), you may consider

To get 95% CI here, you’ll need all three approaches.

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How to calculate CI’s in SPSS

• It is easy (sort of) in the case of normally distributed variables

• More or less impossible in case of binomial (Use Excel)

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Assume we have a dataset with a variable called: Alcohol

Hmmmm

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Choose

• Analyze

• General Linear Model

• Univariate

Choose

• Analyze

• General Linear Model

• Univariate

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• Drag the variable Alcohol into Dependent Variable

• Click Options

• Choose Parameter estimates

• Drag the variable Alcohol into Dependent Variable

• Click Options

• Choose Parameter estimates

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… And now we get