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by rfeather
2645 days ago
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That's the thing. P values don't prove that anything must be. They simply say that if rerunning the experiment again, it would be surprising to get a different result. Conversely, if you don't find "statistical significance" it definitely doesn't mean there isn't a difference. In practice, it might (often) mean the study didn't have enough samples to find a relatively small effect, but the layperson making decisions (do I allow right turn on red or is that dangerous?) may not get that nuance. A book that really helped clarify my thinking on this is _Statistics Done Wrong_ by Alex Reinhart. Edit: remove "interpret" from last sentence to clarify |
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Read it in full here: https://www.statisticsdonewrong.com/power.html#the-wrong-tur...