Bias Correction of Learned Generative Models using Likelihood-Free Importance Weighting
Grover, Aditya, Song, Jiaming, Kapoor, Ashish, Tran, Kenneth, Agarwal, Alekh, Horvitz, Eric J., Ermon, Stefano
–Neural Information Processing Systems
A learned generative model often produces biased statistics relative to the underlying data distribution. A standard technique to correct this bias is importance sampling, where samples from the model are weighted by the likelihood ratio under model and true distributions. When the likelihood ratio is unknown, it can be estimated by training a probabilistic classifier to distinguish samples from the two distributions. We employ this likelihood-free importance weighting method to correct for the bias in generative models. We find that this technique consistently improves standard goodness-of-fit metrics for evaluating the sample quality of state-of-the-art deep generative models, suggesting reduced bias.
Neural Information Processing Systems
Mar-19-2020, 01:03:34 GMT
- Technology: