多比喻语言生成

Huiyuan Lai, M. Nissim
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引用次数: 1

摘要

比喻语言生成的任务是在忠实于原语境的前提下,以所期望的修辞格重新表述给定文本。我们通过为英语中五种常见的比喻形式的自动生成提供基准,向多比喻语言建模迈出了第一步。我们在BART的基础上采用了一种多比喻语言预训练方案和一种将目标比喻信息注入编码器的机制来训练mFLAG;这使得从另一个比喻形式生成具有目标比喻形式的文本,而不需要平行的比喻-比喻句子对。我们的方法优于所有强基线。本文还对不同修辞格之间的关系进行了定性分析和思考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Figurative Language Generation
Figurative language generation is the task of reformulating a given text in the desired figure of speech while still being faithful to the original context. We take the first step towards multi-figurative language modelling by providing a benchmark for the automatic generation of five common figurative forms in English. We train mFLAG employing a scheme for multi-figurative language pre-training on top of BART, and a mechanism for injecting the target figurative information into the encoder; this enables the generation of text with the target figurative form from another figurative form without parallel figurative-figurative sentence pairs. Our approach outperforms all strong baselines. We also offer some qualitative analysis and reflections on the relationship between the different figures of speech.
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