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Main Authors: Liao, Yi-Hsiu, Shen, Cheng, Brenda, Yang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.05364
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author Liao, Yi-Hsiu
Shen, Cheng
Brenda
Yang
author_facet Liao, Yi-Hsiu
Shen, Cheng
Brenda
Yang
contents Corpus Aware Training (CAT) leverages valuable corpus metadata during training by injecting corpus information into each training example, and has been found effective in the literature, commonly known as the "tagging" approach. Models trained with CAT inherently learn the quality, domain and nuance between corpora directly from data, and can easily switch to different inference behavior. To achieve the best evaluation, CAT models pre-define a group of high quality data before training starts which can be error-prone and inefficient. In this work, we propose Optimal Corpus Aware Training (OCAT), which fine-tunes a CAT pre-trained model by freezing most of the model parameters and only tuning small set of corpus-related parameters. We show that OCAT is lightweight, resilient to overfitting, and effective in boosting model accuracy. We use WMT23 English to Chinese and English to German translation tasks as our test ground and show +3.6 and +1.8 chrF improvement, respectively, over vanilla training. Furthermore, our approach is on-par or slightly better than other state-of-the-art fine-tuning techniques while being less sensitive to hyperparameter settings.
format Preprint
id arxiv_https___arxiv_org_abs_2508_05364
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Optimal Corpus Aware Training for Neural Machine Translation
Liao, Yi-Hsiu
Shen, Cheng
Brenda
Yang
Machine Learning
Artificial Intelligence
Corpus Aware Training (CAT) leverages valuable corpus metadata during training by injecting corpus information into each training example, and has been found effective in the literature, commonly known as the "tagging" approach. Models trained with CAT inherently learn the quality, domain and nuance between corpora directly from data, and can easily switch to different inference behavior. To achieve the best evaluation, CAT models pre-define a group of high quality data before training starts which can be error-prone and inefficient. In this work, we propose Optimal Corpus Aware Training (OCAT), which fine-tunes a CAT pre-trained model by freezing most of the model parameters and only tuning small set of corpus-related parameters. We show that OCAT is lightweight, resilient to overfitting, and effective in boosting model accuracy. We use WMT23 English to Chinese and English to German translation tasks as our test ground and show +3.6 and +1.8 chrF improvement, respectively, over vanilla training. Furthermore, our approach is on-par or slightly better than other state-of-the-art fine-tuning techniques while being less sensitive to hyperparameter settings.
title Optimal Corpus Aware Training for Neural Machine Translation
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2508.05364