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arxiv:2203.10579

Small Batch Sizes Improve Training of Low-Resource Neural MT

Published on Mar 20, 2022
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Abstract

Smaller batch sizes provide better regularization and higher performance than larger batches in low-resource Transformer training for neural machine translation.

AI-generated summary

We study the role of an essential hyper-parameter that governs the training of Transformers for neural machine translation in a low-resource setting: the batch size. Using theoretical insights and experimental evidence, we argue against the widespread belief that batch size should be set as large as allowed by the memory of the GPUs. We show that in a low-resource setting, a smaller batch size leads to higher scores in a shorter training time, and argue that this is due to better regularization of the gradients during training.

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