BriefGPT.xyz
Jun, 2022
高阶降噪得分匹配用于分数型扩散ODE的最大似然训练
Maximum Likelihood Training for Score-Based Diffusion ODEs by High-Order Denoising Score Matching
HTML
PDF
Cheng Lu, Kaiwen Zheng, Fan Bao, Jianfei Chen, Chongxuan Li...
TL;DR
该研究论文介绍了如何通过高阶噪声抑制分数匹配方法实现得分网络的最大似然训练,以提高得分模型的生成质量和对于数据概率分布的似然评估。
Abstract
score-based generative models
have excellent performance in terms of generation quality and likelihood. They model the data distribution by matching a parameterized
score network
with first-order data score funct
→