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Learning Mixtures of Gaussians Using the DDPM Objective

Learning Mixtures of Gaussians Using the DDPM Objective

3 July 2023
Kulin Shah
Sitan Chen
Adam R. Klivans
    DiffM
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Papers citing "Learning Mixtures of Gaussians Using the DDPM Objective"

8 / 8 papers shown
Title
On the Generalization Properties of Diffusion Models
On the Generalization Properties of Diffusion Models
Puheng Li
Zhong Li
Huishuai Zhang
Jiang Bian
64
29
0
13 Mar 2025
Understanding Classifier-Free Guidance: High-Dimensional Theory and Non-Linear Generalizations
Understanding Classifier-Free Guidance: High-Dimensional Theory and Non-Linear Generalizations
Krunoslav Lehman Pavasovic
Jakob Verbeek
Giulio Biroli
Marc Mézard
59
0
0
11 Feb 2025
Nonequilbrium physics of generative diffusion models
Nonequilbrium physics of generative diffusion models
Zhendong Yu
Haiping Huang
DiffM
AI4CE
31
4
0
20 May 2024
U-Nets as Belief Propagation: Efficient Classification, Denoising, and
  Diffusion in Generative Hierarchical Models
U-Nets as Belief Propagation: Efficient Classification, Denoising, and Diffusion in Generative Hierarchical Models
Song Mei
3DV
AI4CE
DiffM
31
11
0
29 Apr 2024
On the Asymptotic Mean Square Error Optimality of Diffusion Models
On the Asymptotic Mean Square Error Optimality of Diffusion Models
B. Fesl
Benedikt Bock
Florian Strasser
Michael Baur
M. Joham
Wolfgang Utschick
DiffM
26
0
0
05 Mar 2024
Convergence of score-based generative modeling for general data
  distributions
Convergence of score-based generative modeling for general data distributions
Holden Lee
Jianfeng Lu
Yixin Tan
DiffM
177
128
0
26 Sep 2022
Sampling is as easy as learning the score: theory for diffusion models
  with minimal data assumptions
Sampling is as easy as learning the score: theory for diffusion models with minimal data assumptions
Sitan Chen
Sinho Chewi
Jungshian Li
Yuanzhi Li
Adil Salim
Anru R. Zhang
DiffM
123
245
0
22 Sep 2022
Improved Convergence Guarantees for Learning Gaussian Mixture Models by
  EM and Gradient EM
Improved Convergence Guarantees for Learning Gaussian Mixture Models by EM and Gradient EM
Nimrod Segol
B. Nadler
19
11
0
03 Jan 2021
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