Next Semantic Scale Prediction via Hierarchical Diffusion Language Models
- URL: http://arxiv.org/abs/2510.08632v1
- Date: Wed, 08 Oct 2025 17:41:12 GMT
- Title: Next Semantic Scale Prediction via Hierarchical Diffusion Language Models
- Authors: Cai Zhou, Chenyu Wang, Dinghuai Zhang, Shangyuan Tong, Yifei Wang, Stephen Bates, Tommi Jaakkola,
- Abstract summary: HDLM builds on a hierarchical vocabulary where low-level tokens with detailed semantics are surjectively mapped to high-level tokens with coarse-grained meanings.<n>In the forward process, each token is independently perturbed to its higher-level ancestor with more abstract semantics according to the scheduler.<n>In the reverse process the model progressively predicts the next, more detailed semantics.
- Score: 31.562156001116673
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this paper we introduce Hierarchical Diffusion Language Models (HDLM) -- a novel family of discrete diffusion models for language modeling. HDLM builds on a hierarchical vocabulary where low-level tokens with detailed semantics are surjectively mapped to high-level tokens with coarse-grained meanings. In the forward process, each token is independently perturbed to its higher-level ancestor with more abstract semantics according to the scheduler, while in the reverse process the model progressively predicts the next, more detailed semantics. Taken together, HDLM provides a general time-varying next semantic scale prediction process for language modeling. We derive closed-form expressions for the diffusion Evidence Lower Bound (ELBO), and show that HDLM can be implemented in a flexible manner while including the existing MDLM as a special case. We also propose practical training techniques based on the insights. Extensive text generation experiments validate the effectiveness of HDLM, which demonstrates consistently lower validation and generative perplexity than baselines.
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