In this paper, we comprehensively study on context-aware generation of Chinese song lyrics. Conventional text generative models generate a sequence or sentence word by word, failing to consider the contextual relationship between sentences. Taking account into the characteristics of lyrics, a hierarchical attention based Seq2Seq (Sequence-to-Sequence) model is proposed for Chinese lyrics generation. With encoding of word-level and sentence-level contextual information, this model promotes the topic relevance and consistency of generation. A large Chinese lyrics corpus is also leveraged for model training. Eventually, results of automatic and human evaluations demonstrate that our model is able to compose complete Chinese lyrics with one united topic constraint.
翻译:在本文中,我们全面研究中华歌词的背景意识生成。 常规文字变异模型生成一个逐字顺序或句子, 不考虑各句之间的背景关系。 考虑到歌词的特点, 为中华歌词生成建议了一个基于Seq2Seq(顺序到顺序)的分级关注模式。 通过将字级和句级背景信息编码, 该模式促进了该主题的关联性和一致性。 大量中华歌词也被用于模式培训。 最终, 自动和人文评估的结果表明, 我们的模式能够用一个统一的专题限制来合成完整的中文歌词。