vault backup: 2024-02-13 13:57:56
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@ -49,10 +49,21 @@ Degrees of freedom ($df$) can be found by subtracting 1 from the sample size. Th
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The equivalent of $normalcdf$ for a t test is $tcdf$. This function returns a percentage.
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## P Value
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The chance of observing at least a sample statistic, or something more extreme, if the null hypothesis is true.
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The *chance of observing at least a sample statistic, or something more extreme*, if the null hypothesis is true.
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If the **p-value is less than *5*%, reject the null** hypothesis, evidence.
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If the **p-value is greater than *5*%, fail to reject** the null hypothesis, not enough evidence.
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Investigators should:
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- Summarize the data
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- Say what test was used
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- Report the p-value
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Investigators should not:
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- Blindly compare P to 5% or 1%, there are real world factors that change how important this value is.
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### Data Mining/Snooping
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(Ch 28-29, stat 1040)
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## Goodness of fit tests ($\chi ^2$)
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This test is used when you have one qualitative variable with many categories, eg the (color, size, shape) of an (item).
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