RTE is a significant problem and is a reasonably active research community. The proposed research works on the approach to this problem are pretty diverse with many different directions. For Vietnamese, the RTE problem is moderately new, but this problem plays a vital role in natural language understanding systems. Currently, methods to solve this problem based on contextual word representation learning models have given outstanding results. However, Vietnamese is a semantically rich language. Therefore, in this paper, we want to present an experiment combining semantic word representation through the SRL task with context representation of BERT relative models for the RTE problem. The experimental results give conclusions about the influence and role of semantic representation on Vietnamese in understanding natural language. The experimental results show that the semantic-aware contextual representation model has about 1% higher performance than the model that does not incorporate semantic representation. In addition, the effects on the data domain in Vietnamese are also higher than those in English. This result also shows the positive influence of SRL on RTE problem in Vietnamese.
翻译:RETE是一个重要问题,是一个相当活跃的研究机构。对于越南人来说,提议的关于解决这一问题的方法的研究工作与许多不同的方向有很大不同。对于越南人来说,RETE问题是一个中度的新问题,但这一问题在自然语言理解体系中发挥着至关重要的作用。目前,基于相关文字代表学习模式的解决该问题的方法已经取得了突出的成果。然而,越南语是一个语言上丰富的语言。因此,在本文中,我们想提出一个实验,通过SRL任务将语义表达方式与BERT相对模型的背景表述方式结合起来。实验结果对越南人在理解自然语言方面的语义代表方式的影响和作用作出了结论。实验结果显示,语义认知背景代表模式比不包含语义代表模式的模型有大约1%的性能。此外,越南语数据领域的影响也比英语大。这也表明SRL对越南语语言中RTE问题的积极影响。