Concept

Candidate Generative Model Fit Score

To evaluate the quality of a candidate generative model, a fit score SB^(θ)S_{\hat{\mathcal{B}}}(\theta) of a candidate model B^G^,f^,QN(θ)\hat{\mathcal{B}}_{\hat{\mathcal{G}}, \hat{f}, Q_N}(\theta) is introduced. This score is implemented in various ways in the literature, but it always has the property of being minimal when P=QP = Q (perfect fit in the large sample limit). Examples of such scores include:

  • Log-Likelihood Parametric Scores
  • Implicit Fit Score Computed as an Independence Score Between Cause and Noise Variable
  • Non-parametric Scores

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Updated 2026-06-14

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Data Science