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Main Authors: Rousset, Thibault, Kakibuchi, Taisei, Sasaki, Yusuke, Nomura, Yoshihide
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.12001
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author Rousset, Thibault
Kakibuchi, Taisei
Sasaki, Yusuke
Nomura, Yoshihide
author_facet Rousset, Thibault
Kakibuchi, Taisei
Sasaki, Yusuke
Nomura, Yoshihide
contents Advancements in Natural Language Processing have enabled specialized language models, but integrating domain-specific knowledge into general-purpose models in multilingual settings remains challenging, particularly for technical vocabulary. This paper investigates the integration of technical vocabulary in merged language models and explores the knowledge transfer mechanisms involved when combining a general-purpose language-specific model with a domain-specific model, focusing on the resulting model's comprehension of technical jargon. Our experiments analyze the impact of this merging process on the target model's proficiency in handling specialized terminology. We present a quantitative evaluation of the performance of the merged model, comparing it with that of the individual constituent models. The findings offer insights into the effectiveness of different model merging methods for enhancing domain-specific knowledge and highlight potential challenges and future directions in leveraging these methods for cross-lingual knowledge transfer in Natural Language Processing.
format Preprint
id arxiv_https___arxiv_org_abs_2502_12001
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Merging Language and Domain Specific Models: The Impact on Technical Vocabulary Acquisition
Rousset, Thibault
Kakibuchi, Taisei
Sasaki, Yusuke
Nomura, Yoshihide
Computation and Language
Machine Learning
Advancements in Natural Language Processing have enabled specialized language models, but integrating domain-specific knowledge into general-purpose models in multilingual settings remains challenging, particularly for technical vocabulary. This paper investigates the integration of technical vocabulary in merged language models and explores the knowledge transfer mechanisms involved when combining a general-purpose language-specific model with a domain-specific model, focusing on the resulting model's comprehension of technical jargon. Our experiments analyze the impact of this merging process on the target model's proficiency in handling specialized terminology. We present a quantitative evaluation of the performance of the merged model, comparing it with that of the individual constituent models. The findings offer insights into the effectiveness of different model merging methods for enhancing domain-specific knowledge and highlight potential challenges and future directions in leveraging these methods for cross-lingual knowledge transfer in Natural Language Processing.
title Merging Language and Domain Specific Models: The Impact on Technical Vocabulary Acquisition
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2502.12001