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Data Likelihood

PreviousCSTestNextBNLikelihood

Last updated 2 months ago

Data Likelihood describes a set of metrics that calculate the likelihood of the synthetic data belonging to the real data.

The metrics are different based on the algorithm they use for the calculation.

BNLikelihood
BNLogLikelihood
GMLikelihood