IB Maths AI 4.7 Notes
This page contains our IB Maths AI notes for 4.7. By reading each one of these notes, you will fully cover the content for IB Maths AI 'Hypotheses & tests'.
Chapters
Hypothesis testing
In this section, we study statistical hypothesis testing. The aim is to decide whether sample evidence is strong enough to support a claim about a population. We will focus on writing hypotheses, interpreting significance levels and -values, using the test, and using the -test. A hypothesis is a statement about a population parameter or about a relationship in a population. For example, if we want to test whether a coin is fair, we could write: If we are comparing two population means, we might write: For a one-tailed test, the alternative may be directional, such as When testing any hypothesis, a significance level needs to be established. This is the cut-off used to decide whether the evidence against is strong enough. It is usually denoted by . Common significance levels are , , and . If the result is significant at the level, this means there is a less than 5% probability that the observed result would be due to random chance if were true. At this stage, we say that is rejected. The p-value measures how extreme the sample result is, assuming that is true. A small -value means the observed result is unlikely under the null hypothesis, so there is evidence against . Decision rule: It is important to say 'do not reject ' rather than 'accept ', because the test does not prove that is true.
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