Revisiting Relation Extraction in the era of Large Language Models

Somin Wadhwa, Silvio Amir, Byron C. Wallace
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引用次数: 13

Abstract

Relation extraction (RE) is the core NLP task of inferring semantic relationships between entities from text. Standard supervised RE techniques entail training modules to tag tokens comprising entity spans and then predict the relationship between them. Recent work has instead treated the problem as a sequence-to-sequence task, linearizing relations between entities as target strings to be generated conditioned on the input. Here we push the limits of this approach, using larger language models (GPT-3 and Flan-T5 large) than considered in prior work and evaluating their performance on standard RE tasks under varying levels of supervision. We address issues inherent to evaluating generative approaches to RE by doing human evaluations, in lieu of relying on exact matching. Under this refined evaluation, we find that: (1) Few-shot prompting with GPT-3 achieves near SOTA performance, i.e., roughly equivalent to existing fully supervised models; (2) Flan-T5 is not as capable in the few-shot setting, but supervising and fine-tuning it with Chain-of-Thought (CoT) style explanations (generated via GPT-3) yields SOTA results. We release this model as a new baseline for RE tasks.
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再论大语言模型时代的关系抽取
关系抽取是自然语言处理的核心任务,主要是从文本中推断实体之间的语义关系。标准的监督正则技术需要训练模块来标记包含实体跨度的令牌,然后预测它们之间的关系。最近的工作将该问题视为序列到序列的任务,将实体之间的关系线性化,作为目标字符串根据输入条件生成。在这里,我们突破了这种方法的局限性,使用比之前工作中考虑的更大的语言模型(GPT-3和Flan-T5大),并在不同级别的监督下评估它们在标准RE任务上的表现。我们通过进行人工评估来解决评估可再生能源生成方法所固有的问题,而不是依赖于精确匹配。在这种改进的评价下,我们发现:(1)GPT-3的少镜头提示达到了接近SOTA的性能,即大致相当于现有的完全监督模型;(2) Flan-T5在少数镜头设置中没有那么强的能力,但是用思维链(CoT)风格的解释(通过GPT-3生成)来监督和微调它可以产生SOTA结果。我们将此模型作为可再生能源任务的新基准发布。
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