View a PDF of the paper titled Modeling the One-to-Many Property in Open-Domain Dialogue with LLMs, by Jing Yang Lee and 2 other authors
Abstract:Open-domain Dialogue (OD) exhibits a one-to-many (o2m) property, whereby multiple appropriate responses exist for a single dialogue context. Despite prior research showing that modeling this property boosts response diversity, most modern LLM-based dialogue agents do not explicitly do so. In this work, we model the o2m property of OD in LLMs by decomposing OD generation into two key tasks: Multi-Response Generation (MRG) and Preference-based Selection (PS), which entail generating a set of n semantically and lexically diverse high-quality responses for a given dialogue context, followed by selecting a single response based on human preference, respectively. To facilitate MRG and PS, we introduce o2mDial, a dialogue corpus explicitly designed to capture the o2m property by featuring multiple plausible responses for each context. Leveraging o2mDial, we propose new in-context learning and instruction-tuning strategies, as well as novel evaluation metrics for MRG, alongside a model-based approach for PS. Empirical results demonstrate that applying the proposed two-stage framework to smaller LLMs for OD generation enhances overall response diversity while maintaining contextual coherence, improving response quality by up to 90%, bringing them closer to the performance of larger models.
Submission history
From: Jing Yang Lee [view email]
[v1]
Wed, 18 Jun 2025 04:19:33 UTC (832 KB)
[v2]
Fri, 2 Jan 2026 17:03:31 UTC (327 KB)
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#Modeling #OnetoMany #Property #OpenDomain #Dialogue #LLMs
















![[2506.15131] Modeling the One-to-Many Property in Open-Domain Dialogue with LLMs [2506.15131] Modeling the One-to-Many Property in Open-Domain Dialogue with LLMs](https://i0.wp.com/arxiv.org/static/browse/0.3.4/images/arxiv-logo-fb.png?w=750&resize=750,375&ssl=1)








