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End-to-End Multi-task Learning for Allusion Detection in Ancient Chinese Poems

机译:端到端多任务学习用于古诗词典故检测

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Much efforts have been devoted to research about ancient Chinese poems. However, tasks around allusions, a fundamental element of ancient Chinese poetry, has received little attention. To mitigate this gap, we introduce three allusion tasks: allusion entity recognition (AER), allusion source identification (ASI), and allusion entity classification (AEC). For each task, we create a large corpus extracted from allusion dictionary. We explore the performance of two learning strategies: single-task model and allusion hierarchical multi-task learning (AHMTL) model. Compared with the single-task model, experimental results show that the AHMTL model improves each task's overall performance by formulating relationship between tasks. In addition, poem readability, a downstream task of allusion tasks, is combined to gain improvement in the F1-score by 1.4%.
机译:人们致力于研究中国古代诗歌。然而,围绕典故的任务是中国古代诗歌的基本要素,却鲜有受到关注。为了减轻这种差距,我们引入了三个典故任务:典故实体识别(AER),典故来源识别(ASI)和典故实体分类(AEC)。对于每个任务,我们创建一个从典故字典中提取的大型语料库。我们探索两种学习策略的性能:单任务模型和典故分层多任务学习(AHMTL)模型。与单任务模型相比,实验结果表明,AHMTL模型通过制定任务之间的关系来提高每个任务的整体性能。此外,诗歌可读性(典故任务的下游任务)结合在一起,可以使F1得分提高1.4%。

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