Deep Learning-Based Knowledge Injection for Metaphor Detection: A
Comprehensive Review
- URL: http://arxiv.org/abs/2308.04306v4
- Date: Mon, 8 Jan 2024 14:32:56 GMT
- Title: Deep Learning-Based Knowledge Injection for Metaphor Detection: A
Comprehensive Review
- Authors: Cheng Yang, Zheng Li, Zhiyue Liu, Qingbao Huang
- Abstract summary: This paper provides a 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.
- Score: 24.968400793968417
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: 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.
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