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Neural Poetry: Learning to Generate Poems Using Syllables

机译:神经诗歌:学习使用音节产生诗歌

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Motivated by the recent progresses on machine learning-based models that learn artistic styles, in this paper we focus on the problem of poem generation. This is a challenging task in which the machine has to capture the linguistic features that strongly characterize a certain poet, as well as the semantics of the poet's production, that are influenced by his personal experiences and by his literary background. Since poetry is constructed using syllables, that regulate the form and structure of poems, we propose a syllable-based neural language model, and we describe a poem generation mechanism that is designed around the poet style, automatically selecting the most representative generations. The poetic work of a target author is usually not enough to successfully train modern deep neural networks, so we propose a multi-stage procedure that exploits non-poetic works of the same author, and also other publicly available huge corpora to learn syntax and grammar of the target language. We focus on the Italian poet Dante Alighieri, widely famous for his Divine Comedy. A quantitative and qualitative experimental analysis of the generated tercets is reported, where we included expert judges with strong background in humanistic studies. The generated tercets are frequently considered to be real by a generic population of judges, with relative difference of 56.25% with respect to the ones really authored by Dante, and expert judges perceived Dante's style and rhymes in the generated text.
机译:受基于学习机器学习艺术风格的基于机器学习的模型的最新进展的推动,在本文中,我们将重点放在诗歌生成问题上。这是一项具有挑战性的任务,其中机器必须捕获强烈表征某位诗人的语言特征以及诗人作品的语义,这些特征受其个人经历和文学背景的影响。由于诗歌是用音节构造的,从而调节了诗歌的形式和结构,因此我们提出了一种基于音节的神经语言模型,并描述了一种围绕诗人风格设计的诗生成机制,自动选择了最具代表性的世代。目标作者的诗歌作品通常不足以成功地训练现代深度神经网络,因此我们提出了一个多阶段程序,该程序利用同一作者的非诗歌作品,以及其他可公开获得的大型语料库,以学习语法和语法。目标语言。我们专注于以意大利神曲闻名的意大利诗人但丁·阿利吉耶里(Dante Alighieri)。报告了对生成的三位一体的定量和定性实验分析,其中我们包括了具有丰富人文研究背景的专家法官。普通法官通常认为生成的三位一体是真实的,相对于但丁的真正作者而言,相对差异为56.25%,专家法官在生成的文本中察觉到了但丁的风格和韵律。

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