利用数据重铸来增强表格推理

Aashna Jena, Vivek Gupta, Manish Shrivastava, Julian Martin Eisenschlos
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引用次数: 2

摘要

创建具有挑战性的表格推理数据对于学习复杂推理至关重要。先前的工作主要依赖于两种数据生成策略。第一种是人工注释,它产生语言多样的数据,但难以扩展。第二类创造是合成生成,它具有可扩展性和成本效益,但缺乏创造性。在这项研究中,我们提出了一个框架,用于半自动重铸现有的表格数据,以利用这两种方法的优点。我们利用框架从五个数据集构建表格NLI实例,这些数据集最初用于table2text创建、表格Q/A和语义解析等任务。我们证明,重铸数据可以用作评估基准,也可以用作增强数据,以提高表格NLI任务的性能。此外,我们还研究了零射击场景中基于重铸数据训练的模型的有效性,并分析了不同重铸数据集类型的性能趋势。
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Leveraging Data Recasting to Enhance Tabular Reasoning
Creating challenging tabular inference data is essential for learning complex reasoning. Prior work has mostly relied on two data generation strategies. The first is human annotation, which yields linguistically diverse data but is difficult to scale. The second category for creation is synthetic generation, which is scalable and cost effective but lacks inventiveness. In this research, we present a framework for semi-automatically recasting existing tabular data to make use of the benefits of both approaches. We utilize our framework to build tabular NLI instances from five datasets that were initially intended for tasks like table2text creation, tabular Q/A, and semantic parsing. We demonstrate that recasted data could be used as evaluation benchmarks as well as augmentation data to enhance performance on tabular NLI tasks. Furthermore, we investigate the effectiveness of models trained on recasted data in the zero-shot scenario, and analyse trends in performance across different recasted datasets types.
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