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8: One-Sample Hypothesis Tests

  • Page ID
    130262
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    • 8.1: The Elements of Hypothesis Testing
      A hypothesis about the value of a population parameter is an assertion about its value. As in the introductory example we will be concerned with testing the truth of two competing hypotheses, only one of which can be true.
    • 8.2: The Observed Significance of a Test
      The conceptual basis of our testing procedure is that we reject the null hypothesis only if the data that we obtained would constitute a rare event if the null hypothesis were actually true. The level of significance α specifies what is meant by “rare.” The observed significance of the test is a measure of how rare the value of the test statistic that we have just observed would be if the null hypothesis were true.
    • 8.3: One-Sample Proportion Test
    • 8.4: One-Sample Test for the Mean


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