Source2Synth:基于真实数据源的合成数据生成和整理

Alisia Lupidi, Carlos Gemmell, Nicola Cancedda, Jane Dwivedi-Yu, Jason Weston, Jakob Foerster, Roberta Raileanu, Maria Lomeli
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引用次数: 0

摘要

大型语言模型在利用结构化数据、复杂推理或工具使用等具有挑战性的场景中仍然举步维艰。在本文中,我们提出了 Source2Synth:一种可用于教授大型语言模型新技能的新方法,无需依赖昂贵的人工注释。Source2Synth 将自定义数据源作为输入,并根据真实世界的数据源生成具有中间推理步骤的合成数据点。Source2Synth 会根据可回答性丢弃低质量的数据,从而提高数据集的质量。我们将这种方法应用于两个具有挑战性的领域,证明了它的通用性:我们测试了多跳问题解答(MHQA)中的推理能力,以及表格问题解答(TQA)中的工具使用情况。与微调基线相比,我们的方法在 WikiSQL 上的 TQA 性能提高了 25.51%,在 HotPotQA 上的 MHQA 性能提高了 22.57%。
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Source2Synth: Synthetic Data Generation and Curation Grounded in Real Data Sources
Large Language Models still struggle in challenging scenarios that leverage structured data, complex reasoning, or tool usage. In this paper, we propose Source2Synth: a new method that can be used for teaching LLMs new skills without relying on costly human annotations. Source2Synth takes as input a custom data source and produces synthetic data points with intermediate reasoning steps grounded in real-world sources. Source2Synth improves the dataset quality by discarding low-quality generations based on their answerability. We demonstrate the generality of this approach by applying it to two challenging domains: we test reasoning abilities in multi-hop question answering (MHQA), and tool usage in tabular question answering (TQA). Our method improves performance by 25.51% for TQA on WikiSQL and 22.57% for MHQA on HotPotQA compared to the fine-tuned baselines.
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