BinQiang Pan
2025
Review-Instruct: A Review-Driven Multi-Turn Conversations Generation Method for Large Language Models
Jiangxu Wu
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Cong Wang
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TianHuang Su
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Jun Yang
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Haozhi Lin
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Chao Zhang
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Ming Peng
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Kai Shi
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SongPan Yang
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BinQiang Pan
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ZiXian Li
Findings of the Association for Computational Linguistics: ACL 2025
The effectiveness of large language models (LLMs) in conversational AI is hindered by their reliance on single-turn supervised fine-tuning (SFT) data, which limits contextual coherence in multi-turn dialogues. Existing methods for generating multi-turn dialogue data struggle to ensure both diversity and quality in instructions. To address this, we propose Review-Instruct, a novel framework that synthesizes multi-turn conversations through an iterative “Ask-Respond-Review” process involving three agent roles: a Candidate, multiple Reviewers, and a Chairman. The framework iteratively refines instructions by incorporating Reviewer feedback, enhancing dialogue diversity and difficulty. We construct a multi-turn dataset using the Alpaca dataset and fine-tune the LLaMA2-13B model. Evaluations on MT-Bench, MMLU-Pro, and Auto-Arena demonstrate significant improvements, achieving absolute gains of 2.9% on MMLU-Pro and 2% on MT-Bench compared to prior state-of-the-art models based on LLaMA2-13B. Ablation studies confirm the critical role of the Review stage and the use of multiple Reviewers in boosting instruction diversity and difficulty. Our work highlights the potential of review-driven, multi-agent frameworks for generating high-quality conversational data at scale.
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- ZiXian Li 1
- Haozhi Lin 1
- Ming Peng 1
- Kai Shi 1
- Tianhuang Su 1
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