Feature Likelihood Divergence: Evaluating the Generalization of Generative Models Using Samples

Neural Information Processing Systems 

However, current methods for evaluating such models remain incomplete: standard likelihood-based metrics do not always apply and rarely correlate with perceptual fidelity, while sample-based metrics, such as FID, are insensitive to overfitting, i.e., inability to generalize beyond the training set.

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