关系抽取的单模态和多模态表示训练

Ciaran Cooney, Rachel Heyburn, Liam Maddigan, Mairead O'Cuinn, Chloe Thompson, Joana Cavadas
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引用次数: 2

摘要

文本、布局和视觉信息的多模态集成在视觉丰富的文档理解(VrDU)任务(包括关系提取(RE))中实现了SOTA结果。然而,尽管其重要性,这些模式的相对预测能力的评价是不太普遍。在这里,我们通过在训练期间迭代地排除每种数据类型的实验来证明共享表示对RE任务的价值。此外,文本和布局数据是单独评估的。虽然双峰文本和布局方法表现最好(F1=0.684),但我们表明文本是实体关系最重要的单一预测因子。此外,布局几何是高度可预测的,甚至可能是一种可行的单峰方法。尽管效果较差,但我们强调了视觉信息可以提高表现的情况。总的来说,我们的结果证明了训练RE联合表征的有效性。
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Unimodal and Multimodal Representation Training for Relation Extraction
Multimodal integration of text, layout and visual information has achieved SOTA results in visually rich document understanding (VrDU) tasks, including relation extraction (RE). However, despite its importance, evaluation of the relative predictive capacity of these modalities is less prevalent. Here, we demonstrate the value of shared representations for RE tasks by conducting experiments in which each data type is iteratively excluded during training. In addition, text and layout data are evaluated in isolation. While a bimodal text and layout approach performs best (F1=0.684), we show that text is the most important single predictor of entity relations. Additionally, layout geometry is highly predictive and may even be a feasible unimodal approach. Despite being less effective, we highlight circumstances where visual information can bolster performance. In total, our results demonstrate the efficacy of training joint representations for RE.
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