Statistics 270 - PowerPoint PPT Presentation

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Statistics 270

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Statistics 270 Lecture 25 – PowerPoint PPT presentation

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Title: Statistics 270


1
Statistics 270 Lecture 25
2
Cautions about Z-Tests
  • Data must be a random sample
  • Outliers can distort results
  • Shape of the population distribution matters
    (large and small samples?)
  • For significance tests, there is a difference
    between practical and statistical significance

3
Types of Errors in a Significance Test
  • Suppose that the null hypothesis is true, we
    could collect a sample that suggests that we
    reject H0
  • Suppose that H0 is not true, we could fail to
    reject the null hypothesis

4
Inference About the Population Mean
  • To make inference about the population mean, m,
    we have used the z-test
  • Key feature s is known
  • Most often, s is unknown!
  • s must be estimated from the data
  • Use to estimate s

5
Inference About the Population Mean
  • To make probability statements about the the
    sample mean, we have used the Z-statistic when s
    is known
  • When s is unknown, we use the one-sample
    t-statistic with (n-1) degrees of freedom

6
Inference About the Population Mean
  • Standard error
  • Degrees of freedom

7
One Sample t-Test for a Population Mean
  • Data random sample x1, x2, , xn
  • Mean, m, is unknown
  • Standard deviation is unknown
  • For testing the hypothesis H0 mm0
  • Test Statistic
  • Degrees of freedom t has a t-distribution with
    n-1 degrees of freedom

8
One Sample t-Test for a Population Mean
  • Computing p-value depends on the alternate
    hypothesis
  • P-values are exact if the population distribution
    is normal and approximately correct for large
    samples in other cases

9
One Sample t-Test for a Population Mean
  • Rule of Thumb
  • For nlt15, use t-test if data appear approximately
    normal
  • For n 15, can use t-test when no outliers
  • For large n (say n 40), can safely use t-test
  • Note always require random sample!

10
Example
  • Composition of earths atmosphere has changed
    over time
  • Gas bubbles in ancient amber are examined to
    study the nature of the atmosphere long ago
  • Measurements on specimens of amber from the
    Cretaceous period (75-95 million years ago) give
    the following percentages of nitrogen

63.4 65.0 64.4
63.3 54.8 64.5
60.8 49.1 51.0
11
Example
  • Assume the data are a random sample from the
    Cretaceous period
  • To see if there is a difference with todays
    78.1 nitrogen, conduct a hypothesis test using
    these data

12
Example
  • Hypotheses
  • Test Statistic
  • P-value
  • Conclusion
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