A Learning and Practicing System to Support Effective Poetry Generation Based on Neural Network

Tianqi Gao
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引用次数: 0

Abstract

Chinese ancient poetry has been a favorite literary form and is still very popular after thousands of years. As opposed to free language, poetry has the characteristics of aestheticism and conciseness. People can easily judge the quality of ancient poetry, so the generation of ancient poetry can be used as an important method for beginners to learn NLG models and judge the performance of the models. Therefore, we present a novel system called LiBai to facilitate the comprehensive generation and analysis of poetry. The system LiBai includes two main functionality modules - a versatile model library and a user-friendly and interactive studio. LiBai can help user: 1) learn popular poetry generation models systematically, including the model introduction, network structures and performances; 2) through adjusting various model parameters, interactive training, predicting and directly apply these models on real data easily and 3) simply and quickly analyse the generated poetry.
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基于神经网络的有效诗歌生成学习与实践系统
中国古诗一直是一种受欢迎的文学形式,几千年后仍然很受欢迎。相对于自由语言,诗歌具有唯美性和简洁性。人们很容易判断古诗的质量,所以古诗的生成可以作为初学者学习NLG模型和判断模型性能的重要方法。因此,我们提出了一种叫做“立白”的小说系统,以方便诗歌的全面生成和分析。LiBai系统包括两个主要功能模块——一个通用的模型库和一个用户友好的交互式工作室。李白可以帮助用户:1)系统学习流行的诗歌生成模型,包括模型介绍、网络结构和表演;2)通过调整各种模型参数,进行交互训练,轻松预测并直接应用于实际数据;3)简单快速地分析生成的诗歌。
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