MarkovKernels.jl
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  • Likelihoods
  • Flat likelihoods
  • Flat likelihoods


Flat likelihoods

A flat likelihood, $L$, acts as ideentity under Bayes' rule, that is:

\[D(x) = \frac{L(x)D(x)}{\int L(x) D(x) dx}\]

Type

MarkovKernels.FlatLikelihood — Type
FlatLikelihood

Type for representing flat likelihoods.

source
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