论离散性在扩散大语言模型中的作用 / On the Role of Discreteness in Diffusion LLMs
1️⃣ 一句话总结
这篇论文分析了将扩散模型应用于文本生成时面临的挑战,指出当前方法在信息分布和多词依赖建模上的不足,并呼吁设计更贴合文本结构的新型扩散过程。
Diffusion models offer appealing properties for language generation, such as parallel decoding and iterative refinement, but the discrete and highly structured nature of text challenges the direct application of diffusion principles. In this paper, we revisit diffusion language modeling from the view of diffusion process and language modeling, and outline five properties that separate diffusion mechanics from language-specific requirements. We first categorize existing approaches into continuous diffusion in embedding space and discrete diffusion over tokens. We then show that each satisfies only part of the five essential properties and therefore reflects a structural trade-off. Through analyses of recent large diffusion language models, we identify two central issues: (i) uniform corruption does not respect how information is distributed across positions, and (ii) token-wise marginal training cannot capture multi-token dependencies during parallel decoding. These observations motivate diffusion processes that align more closely with the structure of text, and encourage future work toward more coherent diffusion language models.
论离散性在扩散大语言模型中的作用 / On the Role of Discreteness in Diffusion LLMs
这篇论文分析了将扩散模型应用于文本生成时面临的挑战,指出当前方法在信息分布和多词依赖建模上的不足,并呼吁设计更贴合文本结构的新型扩散过程。
源自 arXiv: 2512.22630