Multilingual Transfer and Domain Adaptation for Low-Resource Languages of Spain
Yuanchang Luo
Zhanglin Wu
Daimeng Wei
Hengchao Shang
Zongyao Li
Jiaxin Guo
Zhiqiang Rao
Shaojun Li
Jinlong Yang
Yuhao Xie
Jiawei Zheng Bin Wei
Hao Yang

Abstract
This article introduces the submission status of the Translation into Low-Resource Languages of Spain task at (WMT 2024) by Huawei Translation Service Center (HW-TSC). We participated in three translation tasks: spanish to aragonese (es-arg), spanish to aranese (es-arn), and spanish to asturian (es-ast). For these three translation tasks, we use training strategies such as multilingual transfer, regularized dropout, forward translation and back translation, labse denoising, transduction ensemble learning and other strategies to neural machine translation (NMT) model based on training deep transformer-big architecture. By using these enhancement strategies, our submission achieved a competitive result in the final evaluation.
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