ItDPDM: Information-Theoretic Discrete Poisson Diffusion Model
–Neural Information Processing Systems
Generative modeling of non-negative, discrete data, such as symbolic music, remains challenging due to two persistent limitations in existing methods. First, most approaches rely on modeling continuous embeddings, which are not wellsuited for inherently discrete data distributions.
Neural Information Processing Systems
Jun-14-2026, 19:23:21 GMT
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