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A Comparison of Feature-Based and Neural Scansion of Poetry

机译:基于特征的诗与神经诗的比较

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Automatic analysis of poetic rhythm is a challenging task that involves linguistics, literature, and computer science. When the language to be analyzed is known, rule-based systems or data-driven methods can be used. In this paper, we analyze poetic rhythm in English and Spanish. We show that the representations of data learned from character-based neural models are more informative than the ones from hand-crafted features, and that a Bi-LSTM+CRF-model produces state-of-the art accuracy on scansion of poetry in two languages. Results also show that the information about whole word structure, and not just independent syllables, is highly informative for performing scansion.
机译:诗歌节奏的自动分析是一项艰巨的任务,涉及语言学,文学和计算机科学。当要分析的语言已知时,可以使用基于规则的系统或数据驱动的方法。在本文中,我们分析了英语和西班牙语的诗歌节奏。我们表明,从基于字符的神经模型中学习的数据表示比从手工特征中获取的数据更具有信息性,并且Bi-LSTM + CRF模型在将诗歌扫描成两半方面产生了最新的准确性语言。结果还表明,有关整个单词结构的信息,而不仅仅是独立音节的信息,对于执行拼音很有帮助。

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