vault backup: 2024-02-02 13:13:50

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zleyyij 2024-02-02 13:13:50 -07:00
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@ -10,7 +10,8 @@ If an observed value is too many SEs away from the expected value, it is hard to
Start by finding a null and alternative hypothesis, eg:
- Null: *x* is *y*. This is often given in the problem
- Alternative: If you're being asked to determine if something has changed, you're determining whether or not *x* is equal to. If you're being asked to find the more than, or less than, it's a one sided test.
Then find the SE, take the EV and the observed value, and find the $z$ score. You can use this $z$ score combined with something like $normalcdf$ to find the amount that is outside of the expected range. If that total amount is less than 5%, than the null hypothesis should be rejected. If that total amount is more than 5%, the difference is too small, and it should not
Then find the SE, take the EV and the observed value, and find the $z$ score. You can use this $z$ score combined with something like $normalcdf$ to find the amount that is outside of the expected range. If that total amount is less than 5%, than the null hypothesis should be rejected. If that total amount is more than 5%, the difference is too small, and it should not be rejected.
Then you can provide a conclusion based off of either the null hypothesis, or the alternative hypothesis.
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