LGNov 28, 2021

On Predicting Generalization using GANs

arXiv:2111.14212v28 citations
Originality Incremental advance
AI Analysis

This provides a new approach for predicting generalization in deep learning, which could benefit researchers and practitioners in model evaluation, though it is incremental as it builds on existing GAN methods.

The paper tackles the problem of predicting test error in deep networks by using synthetic data from GANs trained on the same dataset, finding that GAN-generated samples can effectively substitute for test data without additional tuning.

Research on generalization bounds for deep networks seeks to give ways to predict test error using just the training dataset and the network parameters. While generalization bounds can give many insights about architecture design, training algorithms, etc., what they do not currently do is yield good predictions for actual test error. A recently introduced Predicting Generalization in Deep Learning competition~\citep{jiang2020neurips} aims to encourage discovery of methods to better predict test error. The current paper investigates a simple idea: can test error be predicted using {\em synthetic data,} produced using a Generative Adversarial Network (GAN) that was trained on the same training dataset? Upon investigating several GAN models and architectures, we find that this turns out to be the case. In fact, using GANs pre-trained on standard datasets, the test error can be predicted without requiring any additional hyper-parameter tuning. This result is surprising because GANs have well-known limitations (e.g. mode collapse) and are known to not learn the data distribution accurately. Yet the generated samples are good enough to substitute for test data. Several additional experiments are presented to explore reasons why GANs do well at this task. In addition to a new approach for predicting generalization, the counter-intuitive phenomena presented in our work may also call for a better understanding of GANs' strengths and limitations.

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