计算机科学
虚假关系
忠诚
机器学习
选择(遗传算法)
样品(材料)
编码(集合论)
生成语法
质量(理念)
生成模型
人工智能
选型
分数(化学)
数据挖掘
哲学
集合(抽象数据类型)
有机化学
化学
认识论
程序设计语言
电信
色谱法
作者
Terrance DeVries,Michal Drozdzal,Graham W. Taylor
出处
期刊:Cornell University - arXiv
日期:2020-07-30
被引量:1
摘要
Recent advances in Generative Adversarial Networks (GANs) have led to their widespread adoption for the purposes of generating high quality synthetic imagery. While capable of generating photo-realistic images, these models often produce unrealistic samples which fall outside of the data manifold. Several recently proposed techniques attempt to avoid spurious samples, either by rejecting them after generation, or by truncating the model's latent space. While effective, these methods are inefficient, as a large fraction of training time and model capacity are dedicated towards samples that will ultimately go unused. In this work we propose a novel approach to improve sample quality: altering the training dataset via instance selection before model training has taken place. By refining the empirical data distribution before training, we redirect model capacity towards high-density regions, which ultimately improves sample fidelity, lowers model capacity requirements, and significantly reduces training time. Code is available at this https URL.
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