使用MT5的泰语问题生成

Nutthanit Wiwatbutsiri, A. Suchato, P. Punyabukkana, Nuengwong Tuaycharoen
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引用次数: 0

摘要

英语的问题生成(QG)出版物很多,但泰语的出版物很少。英语中有超过一百万个答案对,而泰语中只有大约12000个答案对。本文提出了一种改进自动泰语答案不可知QG的方法。我们的评估表明,由来自泰国数据集的预训练模型MT5训练的QG模型获得了56.19的BLEU-1分数。我们提出了一种通过使用单个预训练模型生成合成数据的方法和附加机制。我们的最佳模型优于之前的模型,获得了59.03分的BLEU-1分数。流利度评分为4.40分,相关性评分为4.65分,回答能力评分为4.7分(满分5.0分)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Question Generation in the Thai Language Using MT5
There are numerous publications of Question Generation (QG) in English but few in Thai. More than a million question-answer pairs are available in the English language, compared with only around 12,000 question-answer pairs in the Thai language. This paper presents a method to improve automatic Thai answer-agnostic QG from a dataset of insufficient size. Our evaluation showed that a QG model which was trained by the pre-trained model MT5 from a Thai dataset achieved a BLEU-1 score of 56.19. We proposed a method to generate synthetic data and an additional mechanism by using a single pre-trained model. Our best model outperformed the previous model by achieving a BLEU-1 score of 59.03. The results from the human evaluation in fluency score was 4.40, the relevance score 4.65, and the answer-ability score 4.7 out of 5.0.
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