Data analysis recipes: Probability calculus for inference
classification
⚛️ physics.data-an
astro-ph.IM
keywords
analysisprobabilisticprobabilitycalculusdatainferencelikelihoodsposterior
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In this pedagogical text aimed at those wanting to start thinking about or brush up on probabilistic inference, I review the rules by which probability distribution functions can (and cannot) be combined. I connect these rules to the operations performed in probabilistic data analysis. Dimensional analysis is emphasized as a valuable tool for helping to construct non-wrong probabilistic statements. The applications of probability calculus in constructing likelihoods, marginalized likelihoods, posterior probabilities, and posterior predictions are all discussed.
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