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Main Authors: Li, Min, Yuan, Chun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.06605
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author Li, Min
Yuan, Chun
author_facet Li, Min
Yuan, Chun
contents Modeling semantic relevance has always been a challenging and critical task in natural language processing. In recent years, with the emergence of massive amounts of annotated data, it has become feasible to train complex models, such as neural network-based reasoning models. These models have shown excellent performance in practical applications and have achieved the current state-ofthe-art performance. However, even with such large-scale annotated data, we still need to think: Can machines learn all the knowledge necessary to perform semantic relevance detection tasks based on this data alone? If not, how can neural network-based models incorporate external knowledge into themselves, and how can relevance detection models be constructed to make full use of external knowledge? In this paper, we use external knowledge to enhance the pre-trained semantic relevance discrimination model. Experimental results on 10 public datasets show that our method achieves consistent improvements in performance compared to the baseline model.
format Preprint
id arxiv_https___arxiv_org_abs_2505_06605
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Using External knowledge to Enhanced PLM for Semantic Matching
Li, Min
Yuan, Chun
Computation and Language
Modeling semantic relevance has always been a challenging and critical task in natural language processing. In recent years, with the emergence of massive amounts of annotated data, it has become feasible to train complex models, such as neural network-based reasoning models. These models have shown excellent performance in practical applications and have achieved the current state-ofthe-art performance. However, even with such large-scale annotated data, we still need to think: Can machines learn all the knowledge necessary to perform semantic relevance detection tasks based on this data alone? If not, how can neural network-based models incorporate external knowledge into themselves, and how can relevance detection models be constructed to make full use of external knowledge? In this paper, we use external knowledge to enhance the pre-trained semantic relevance discrimination model. Experimental results on 10 public datasets show that our method achieves consistent improvements in performance compared to the baseline model.
title Using External knowledge to Enhanced PLM for Semantic Matching
topic Computation and Language
url https://arxiv.org/abs/2505.06605