AI RESEARCH
Data Selection for Multi-turn Dialogue Instruction Tuning
arXiv CS.CL
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ArXi:2604.07892v1 Announce Type: new Instruction-tuned language models increasingly rely on large multi-turn dialogue corpora, but these datasets are often noisy and structurally inconsistent, with topic drift, repetitive chitchat, and mismatched answer formats across turns. We address this from a data selection perspective and propose \textbf{MDS} (Multi-turn Dialogue Selection), a dialogue-level framework that scores whole conversations rather than isolated turns.