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Supervised Rhyme Detection with Siamese Recurrent Networks

机译:暹罗经常性网络监督押探测

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We present the first supervised approach to rhyme detection with Siamese Recurrent Networks (SRN) that offer near perfect performance (97% accuracy) with a single model on rhyme pairs for German, English and French, allowing future large scale analyses. SRNs learn a similarity metric on variable length character sequences that can be used as judgement on the distance of imperfect rhyme pairs and for binary classification. For training, we construct a diachronically balanced rhyme goldstandard of New High German (NHG) poetry. For further testing, we sample a second collection of NHG poetry and set of contemporary Hip-Hop lyrics, annotated for rhyme and assonance. We train several high-performing SRN models and evaluate them qualitatively on selected sonnetts.
机译:我们介绍了诸如暹罗经常性网络(SRN)的第一个监督押韵检测方法,提供了近乎完美的性能(97%的精度),在德语,英语和法语的押韵对上的单一模型,允许未来的大规模分析。 SRNS学习可变长度字符序列上的相似度量,可用作对不完美押韵对的距离和二进制分类的判断。对于培训,我们构建了一种新的高德国人(NHG)诗歌的模型平衡的押韵。有关进一步测试,我们将为第二次NHG诗集和一系列当代嘻哈歌词进行调整,为押韵和分量进行注释。我们培训几种高性能的SRN模型,并在定性地评估选定的Sonnetts。

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