English

QUDsim: Quantifying Discourse Similarities in LLM-Generated Text

Computation and Language 2025-08-12 v2

Abstract

As large language models become increasingly capable at various writing tasks, their weakness at generating unique and creative content becomes a major liability. Although LLMs have the ability to generate text covering diverse topics, there is an overall sense of repetitiveness across texts that we aim to formalize and quantify via a similarity metric. The familiarity between documents arises from the persistence of underlying discourse structures. However, existing similarity metrics dependent on lexical overlap and syntactic patterns largely capture content\textit{content} overlap, thus making them unsuitable for detecting structural\textit{structural} similarities. We introduce an abstraction based on linguistic theories in Questions Under Discussion (QUD) and question semantics to help quantify differences in discourse progression. We then use this framework to build QUDsim\textbf{QUDsim}, a similarity metric that can detect discursive parallels between documents. Using QUDsim, we find that LLMs often reuse discourse structures (more so than humans) across samples, even when content differs. Furthermore, LLMs are not only repetitive and structurally uniform, but are also divergent from human authors in the types of structures they use.

Keywords

Cite

@article{arxiv.2504.09373,
  title  = {QUDsim: Quantifying Discourse Similarities in LLM-Generated Text},
  author = {Ramya Namuduri and Yating Wu and Anshun Asher Zheng and Manya Wadhwa and Greg Durrett and Junyi Jessy Li},
  journal= {arXiv preprint arXiv:2504.09373},
  year   = {2025}
}

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COLM 2025 Camera Ready

R2 v1 2026-06-28T22:56:12.842Z