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Autori principali: Ghiffari, Fadli Aulawi Al, Alfina, Ika, Azizah, Kurniawati
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2401.12072
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author Ghiffari, Fadli Aulawi Al
Alfina, Ika
Azizah, Kurniawati
author_facet Ghiffari, Fadli Aulawi Al
Alfina, Ika
Azizah, Kurniawati
contents While structure learning achieves remarkable performance in high-resource languages, the situation differs for under-represented languages due to the scarcity of annotated data. This study focuses on assessing the efficacy of transfer learning in enhancing dependency parsing for Javanese, a language spoken by 80 million individuals but characterized by limited representation in natural language processing. We utilized the Universal Dependencies dataset consisting of dependency treebanks from more than 100 languages, including Javanese. We propose two learning strategies to train the model: transfer learning (TL) and hierarchical transfer learning (HTL). While TL only uses a source language to pre-train the model, the HTL method uses a source language and an intermediate language in the learning process. The results show that our best model uses the HTL method, which improves performance with an increase of 10% for both UAS and LAS evaluations compared to the baseline model.
format Preprint
id arxiv_https___arxiv_org_abs_2401_12072
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Cross-lingual Transfer Learning for Javanese Dependency Parsing
Ghiffari, Fadli Aulawi Al
Alfina, Ika
Azizah, Kurniawati
Computation and Language
While structure learning achieves remarkable performance in high-resource languages, the situation differs for under-represented languages due to the scarcity of annotated data. This study focuses on assessing the efficacy of transfer learning in enhancing dependency parsing for Javanese, a language spoken by 80 million individuals but characterized by limited representation in natural language processing. We utilized the Universal Dependencies dataset consisting of dependency treebanks from more than 100 languages, including Javanese. We propose two learning strategies to train the model: transfer learning (TL) and hierarchical transfer learning (HTL). While TL only uses a source language to pre-train the model, the HTL method uses a source language and an intermediate language in the learning process. The results show that our best model uses the HTL method, which improves performance with an increase of 10% for both UAS and LAS evaluations compared to the baseline model.
title Cross-lingual Transfer Learning for Javanese Dependency Parsing
topic Computation and Language
url https://arxiv.org/abs/2401.12072