论文标题

Mixpoet:通过学习可控的混合潜在空间来产生多样化的诗歌

MixPoet: Diverse Poetry Generation via Learning Controllable Mixed Latent Space

论文作者

Yi, Xiaoyuan, Li, Ruoyu, Yang, Cheng, Li, Wenhao, Sun, Maosong

论文摘要

作为迈向计算机创造力的重要一步,这些年来,自动诗歌产生引起了人们的关注。尽管最近的神经模型在诗歌质量的某些标准上取得了显着的进步,但产生的诗仍然遭受多样性差的问题。相关文献研究表明,不同的因素,例如生活经验,历史背景等,会影响诗人的组成方式,这极大地助长了人为著名的诗歌的高度多样性。在此灵感的启发下,我们提出了Mixpoet,这是一种新型模型,它吸收了多种因素以创造各种风格并促进多样性。基于半监督的变异自动编码器,我们的模型将潜在空间分散到某些子空间中,每个子空间都通过对抗性训练以一个影响因素为条件。通过这种方式,该模型可以学习一个可控的潜在变量,以捕获和混合广义因子相关的属性。不同的因素混合物导致了各种风格,因此进一步将产生的诗彼此区分开来。中国诗歌的实验结果表明,对于三种最先进的模型,混合木材可以提高多样性和质量。

As an essential step towards computer creativity, automatic poetry generation has gained increasing attention these years. Though recent neural models make prominent progress in some criteria of poetry quality, generated poems still suffer from the problem of poor diversity. Related literature researches show that different factors, such as life experience, historical background, etc., would influence composition styles of poets, which considerably contributes to the high diversity of human-authored poetry. Inspired by this, we propose MixPoet, a novel model that absorbs multiple factors to create various styles and promote diversity. Based on a semi-supervised variational autoencoder, our model disentangles the latent space into some subspaces, with each conditioned on one influence factor by adversarial training. In this way, the model learns a controllable latent variable to capture and mix generalized factor-related properties. Different factor mixtures lead to diverse styles and hence further differentiate generated poems from each other. Experiment results on Chinese poetry demonstrate that MixPoet improves both diversity and quality against three state-of-the-art models.

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