We present ViT5, a pretrained Transformer-based encoder-decoder model for the Vietnamese language. With T5-style self-supervised pretraining, ViT5 is trained on a large corpus of high-quality and diverse Vietnamese texts. We benchmark ViT5 on two downstream text generation tasks, Abstractive Text Summarization and Named Entity Recognition. Although Abstractive Text Summarization has been widely studied for the English language thanks to its rich and large source of data, there has been minimal research into the same task in Vietnamese, a much lower resource language. In this work, we perform exhaustive experiments on both Vietnamese Abstractive Summarization and Named Entity Recognition, validating the performance of ViT5 against many other pretrained Transformer-based encoder-decoder models. Our experiments show that ViT5 significantly outperforms existing models and achieves state-of-the-art results on Vietnamese Text Summarization. On the task of Named Entity Recognition, ViT5 is competitive against previous best results from pretrained encoder-based Transformer models. Further analysis shows the importance of context length during the self-supervised pretraining on downstream performance across different settings.
翻译:我们为越南语介绍了ViT5, 这是一种预先训练过的越南语变换器编码器-解码器模型。通过T5式自我监督的预培训,ViT5接受了关于大量高质量和多样化越南文本的培训。我们根据两个下游文本生成任务,即简易文本摘要和名称实体识别,对ViT5进行了基准 ViT5。虽然由于越南语数据丰富和庞大,对英语进行了简易文本摘要化的广泛研究,但对越南语的相同任务进行了极少的研究,而越南语的资源要低得多。我们在此工作中,对越南语的抽象总结和命名实体识别进行了详尽的实验,以验证ViT5的性能与许多其他事先经过训练的变换编码器编码模型相比。我们的实验显示,ViT5大大超越了现有模型,并实现了越南语文本解析的最新结果。关于命名实体识别的任务,ViT5与先前培训的变换模型的最佳结果相比,具有竞争力。我们进一步的分析显示,在不同的下游测试中,在不同的下游演练中,背景长度的重要性。