Title
On Training Sample Memorization: Lessons from Benchmarking Generative Modeling with a Large-scale Competition
Abstract
ABSTRACTMany recent developments on generative models for natural images have relied on heuristically-motivated metrics that can be easily gamed by memorizing a small sample from the true distribution or training a model directly to improve the metric. In this work, we critically evaluate the gameability of these metrics by designing and deploying a generative modeling competition. Our competition received over 11000 submitted models. The competitiveness between participants allowed us to investigate both intentional and unintentional memorization in generative modeling. To detect intentional memorization, we propose the "Memorization-Informed Frechet Inception Distance" (MiFID) as a new memorization-aware metric and design benchmark procedures to ensure that winning submissions made genuine improvements in perceptual quality. Furthermore, we manually inspect the code for the 1000 top-performing models to understand and label different forms of memorization. Our analysis reveals that unintentional memorization is a serious and common issue in popular generative models. The generated images and our memorization labels of those models as well as code to compute MiFID are released to facilitate future studies on benchmarking generative models.
Year
DOI
Venue
2021
10.1145/3447548.3467198
Knowledge Discovery and Data Mining
Keywords
DocType
Citations 
benchmark, competition, neural networks, generative models, memorization, datasets, computer vision
Conference
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Ching-Yuan Bai100.34
Hsuan-Tien Lin282974.77
Colin Raffel319021.50
Wendy Chih-wen Kan400.34