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Metaphor Generation with Conceptual Mappings

机译:隐喻生成与概念映射

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摘要

Generating metaphors is a difficult task as it requires understanding nuanced relationships between abstract concepts. In this paper, we aim to generate a metaphoric sentence given a literal expression by replacing relevant verbs. Guided by conceptual metaphor theory, we propose to control the generation process by encoding conceptual mappings between cognitive domains to generate meaningful metaphoric expressions. To achieve this, we develop two methods: 1) using FrameNet-based embeddings to learn mappings between domains and applying them at the lexical level (CM-Lex), and 2) deriving source/target pairs to train a controlled seq-to-seq generation model (CM-BART). We assess our methods through automatic and human evaluation for basic metaphoricity and conceptual metaphor presence. We show that the unsupervised CM-Lex model is competitive with recent deep learning metaphor generation systems, and CM-BART outperforms all other models both in automatic and human evaluations.
机译:生成隐喻是一项艰巨的任务,因为它需要了解抽象概念之间的细微关系。 在本文中,我们的目的是通过更换相关动词来产生一个隐喻句子。 通过概念隐喻理论为指导,我们建议通过编码认知域之间的概念映射来控制生成过程以产生有意义的隐喻表达式。 为实现这一目标,我们开发了两种方法:1)使用基于Framenet的嵌入来学习域之间的映射并在词汇级别(CM-LEX)和2)导出源/目标对以培训受控的SEQ - SEQ生成模型(CM-BART)。 我们通过对基本隐喻性和概念隐喻存在的自动和人类评估来评估我们的方法。 我们表明,无监督的CM-LEX模型与近期深度学习隐喻生成系统具有竞争力,CM-BART在自动和人类评估中表现出所有其他型号。

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