零样本即时事件模式归纳

Rotem Dror, Haoyu Wang, D. Roth
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引用次数: 8

摘要

疫情爆发涉及哪些事件?策划婚礼时应该采取哪些步骤?这些问题的答案可以通过收集有关感兴趣的复杂事件的许多文档、提取相关信息并对其进行分析来找到,以及它们之间的关系,以构建一个完整描述复杂事件的模式。使用我们的模型,任何主题的完整模式都可以即时生成,而无需任何手动数据收集,即以零样本方式生成。此外,我们开发了从文本中提取相关信息的有效方法,并在一系列实验中证明,在大多数检查场景中,这些模式被认为比人类策划的模式更完整。最后,我们表明,该框架在性能上与以前的监督模式归纳方法相当,这些方法依赖于收集真实文本,甚至在预测任务中达到最佳分数。
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Zero-Shot On-the-Fly Event Schema Induction
What are the events involved in a pandemic outbreak? What steps should be taken when planning a wedding? The answers to these questions can be found by collecting many documents on the complex event of interest, extracting relevant information, and analyzing it. We present a new approach in which large language models are utilized to generate source documents that allow predicting, given a high-level event definition, the specific events, arguments, and relations between them to construct a schema that describes the complex event in its entirety.Using our model, complete schemas on any topic can be generated on-the-fly without any manual data collection, i.e., in a zero-shot manner. Moreover, we develop efficient methods to extract pertinent information from texts and demonstrate in a series of experiments that these schemas are considered to be more complete than human-curated ones in the majority of examined scenarios. Finally, we show that this framework is comparable in performance with previous supervised schema induction methods that rely on collecting real texts and even reaching the best score in the prediction task.
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