ShortListing Model: A Streamlined SimplexDiffusion for Discrete Variable Generation
- Yuxuan Song ,
- Zhe Zhang ,
- Yu Pei ,
- Jingjing Gong ,
- Qiying Yu ,
- Zheng Zhang ,
- Mingxuan Wang ,
- Hao Zhou ,
- Jingjing Liu ,
- Wei-Ying Ma
NeurIPS 2025 |
Generative modeling of discrete variables is challenging yet crucial for applications in natural language processing and biological sequence design. We introduce the Shortlisting Model (SLM), a novel simplex-based diffusion model inspired by progressive candidate pruning. SLM operates on simplex centroids, reducing generation complexity and enhancing scalability. Additionally, SLM incorporates a flexible implementation of classifier-free guidance, enhancing unconditional generation performance. Extensive experiments on DNA promoter and enhancer design, protein design, character-level and large-vocabulary language modeling demonstrate the competitive performance and strong potential of SLM. Our code can be found at https://github.com/GenSI-THUAIR/SLM