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Main Authors: Bakhtiyarzadeh, Mahdi, Tekanlou, Hadi Bayrami Asl, Razmara, Jafar
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2606.01469
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author Bakhtiyarzadeh, Mahdi
Tekanlou, Hadi Bayrami Asl
Razmara, Jafar
author_facet Bakhtiyarzadeh, Mahdi
Tekanlou, Hadi Bayrami Asl
Razmara, Jafar
contents The development of automatic term extraction has become increasingly important in modern technology. Automatic term extraction can be found in virtually every search engine that is currently available to users. Recent advancements have provided promising results for the extraction of automatic terms; however, accurate labeling is difficult because of several factors, such as the limited number of annotated documents available for training and the complexity of extracting multi-word expressions due to shifts in the domain. In this paper, we will present a low-cost and interpretable method of automatic term extraction, developed specifically for Task A of the ATE Shared Task. This new method utilizes fine-tuning extraction strategies that can run on a small amount of computational resources. We evaluated our automated system using both type-level and micro-level measures of precision, recall, and F1-score to measure both complementary aspects of the extraction performance. According to the experimental results, our proposed approach achieves consistent and balanced performance compared to other teams. Even though the technique itself is relatively straightforward, it serves as a good starting point for low-resource models. Overall, the findings point toward the possibility of significant future advancements (in model expansion) with higher-level performance still able to retain their ability to be interpreted.
format Preprint
id arxiv_https___arxiv_org_abs_2606_01469
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Peacemaker at ATE-IT: Automatic term extraction from Italian text for waste management data using encoder model
Bakhtiyarzadeh, Mahdi
Tekanlou, Hadi Bayrami Asl
Razmara, Jafar
Computation and Language
The development of automatic term extraction has become increasingly important in modern technology. Automatic term extraction can be found in virtually every search engine that is currently available to users. Recent advancements have provided promising results for the extraction of automatic terms; however, accurate labeling is difficult because of several factors, such as the limited number of annotated documents available for training and the complexity of extracting multi-word expressions due to shifts in the domain. In this paper, we will present a low-cost and interpretable method of automatic term extraction, developed specifically for Task A of the ATE Shared Task. This new method utilizes fine-tuning extraction strategies that can run on a small amount of computational resources. We evaluated our automated system using both type-level and micro-level measures of precision, recall, and F1-score to measure both complementary aspects of the extraction performance. According to the experimental results, our proposed approach achieves consistent and balanced performance compared to other teams. Even though the technique itself is relatively straightforward, it serves as a good starting point for low-resource models. Overall, the findings point toward the possibility of significant future advancements (in model expansion) with higher-level performance still able to retain their ability to be interpreted.
title Peacemaker at ATE-IT: Automatic term extraction from Italian text for waste management data using encoder model
topic Computation and Language
url https://arxiv.org/abs/2606.01469