cs.AI updates on arXiv.org 07月15日 12:27
DiPT: Enhancing LLM reasoning through diversified perspective-taking
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本文提出DiPT,一种通过引入多元化视角来增强语言模型推理能力的方法,有效提升模型在推理阶段的稳定性和性能,并展示其数据增强在模型微调中的优势。

arXiv:2409.06241v2 Announce Type: replace-cross Abstract: Existing work on improving language model reasoning typically explores a single solution path, which can be prone to errors. Inspired by perspective-taking in social studies, this paper introduces DiPT, a novel approach that complements current reasoning methods by explicitly incorporating diversified viewpoints. This approach allows the model to gain a deeper understanding of the problem's context and identify the most effective solution path during the inference stage. Additionally, it provides a general data-centric AI recipe for augmenting existing data to improve their quality for fine-tuning. Our empirical results demonstrate that DiPT can be flexibly integrated into existing methods that focus on a single reasoning approach, enhancing their reasoning performance and stability when presented with paraphrased problems. Furthermore, we illustrate improved context understanding by maintaining the model's safe outputs against "jailbreaking" prompts intentionally designed to bypass safeguards built into deployed models. Lastly, we show that fine-tuning with data enriched with diverse perspectives can boost the reasoning capabilities of the model compared to fine-tuning with raw data alone.

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语言模型 多视角推理 数据增强 模型微调 推理性能
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