Litcius/Paper detail

MixPoet: Diverse Poetry Generation via Learning Controllable Mixed Latent Space

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

2020Proceedings of the AAAI Conference on Artificial Intelligence37 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

Diversity (politics)PoetryLatent variableCreativityComputer scienceSpace (punctuation)AutoencoderArtificial intelligenceQuality (philosophy)Factor (programming language)PsychologySociologyArtArtificial neural networkSocial psychologyLiteratureEpistemologyPhilosophyOperating systemAnthropologyProgramming languageHuman Motion and AnimationGenerative Adversarial Networks and Image SynthesisArtificial Intelligence in Games