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Main Authors: Yang, Cheng, Li, Zheng, Liu, Zhiyue, Huang, Qingbao
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2308.04306
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author Yang, Cheng
Li, Zheng
Liu, Zhiyue
Huang, Qingbao
author_facet Yang, Cheng
Li, Zheng
Liu, Zhiyue
Huang, Qingbao
contents Metaphor as an advanced cognitive modality works by extracting familiar concepts in the target domain in order to understand vague and abstract concepts in the source domain. This helps humans to quickly understand and master new domains and thus adapt to changing environments. With the continuous development of metaphor research in the natural language community, many studies using knowledge-assisted models to detect textual metaphors have emerged in recent years. Compared to not using knowledge, systems that introduce various kinds of knowledge achieve greater performance gains and reach SOTA in a recent study. Based on this, the goal of this paper is to provide a comprehensive review of research advances in the application of deep learning for knowledge injection in metaphor detection tasks. We will first systematically summarize and generalize the mainstream knowledge and knowledge injection principles. Then, the datasets, evaluation metrics, and benchmark models used in metaphor detection tasks are examined. Finally, we explore the current issues facing knowledge injection methods and provide an outlook on future research directions.
format Preprint
id arxiv_https___arxiv_org_abs_2308_04306
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Deep Learning-Based Knowledge Injection for Metaphor Detection: A Comprehensive Review
Yang, Cheng
Li, Zheng
Liu, Zhiyue
Huang, Qingbao
Computation and Language
Metaphor as an advanced cognitive modality works by extracting familiar concepts in the target domain in order to understand vague and abstract concepts in the source domain. This helps humans to quickly understand and master new domains and thus adapt to changing environments. With the continuous development of metaphor research in the natural language community, many studies using knowledge-assisted models to detect textual metaphors have emerged in recent years. Compared to not using knowledge, systems that introduce various kinds of knowledge achieve greater performance gains and reach SOTA in a recent study. Based on this, the goal of this paper is to provide a comprehensive review of research advances in the application of deep learning for knowledge injection in metaphor detection tasks. We will first systematically summarize and generalize the mainstream knowledge and knowledge injection principles. Then, the datasets, evaluation metrics, and benchmark models used in metaphor detection tasks are examined. Finally, we explore the current issues facing knowledge injection methods and provide an outlook on future research directions.
title Deep Learning-Based Knowledge Injection for Metaphor Detection: A Comprehensive Review
topic Computation and Language
url https://arxiv.org/abs/2308.04306