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Wasserstein Convergence Guarantees for a General Class of Score-Based Generative Models

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Published in:JMLR
Format: Online Article RSS Article
Published: 2026
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publishDateSort 2026
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spellingShingle Wasserstein Convergence Guarantees for a General Class of Score-Based Generative Models
Artificial Intelligence & Machine Learning
Computer Science & IT
Engineering & Technology
sub_discipline_display Computer Science & IT
sub_discipline_facet Computer Science & IT
subject_display Artificial Intelligence & Machine Learning
Computer Science & IT
Engineering & Technology
Artificial Intelligence & Machine Learning
Computer Science & IT
Engineering & Technology
subject_facet Artificial Intelligence & Machine Learning
Computer Science & IT
Engineering & Technology
title Wasserstein Convergence Guarantees for a General Class of Score-Based Generative Models
title_auth Wasserstein Convergence Guarantees for a General Class of Score-Based Generative Models
title_full Wasserstein Convergence Guarantees for a General Class of Score-Based Generative Models
title_fullStr Wasserstein Convergence Guarantees for a General Class of Score-Based Generative Models
title_full_unstemmed Wasserstein Convergence Guarantees for a General Class of Score-Based Generative Models
title_short Wasserstein Convergence Guarantees for a General Class of Score-Based Generative Models
title_sort wasserstein convergence guarantees for a general class of score-based generative models
topic Artificial Intelligence & Machine Learning
Computer Science & IT
Engineering & Technology
url http://jmlr.org/papers/v26/24-0902.html