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Main Authors: Tokarchuk, Evgeniia, Nachesa, Maya K., Troshin, Sergey, Niculae, Vlad
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.17287
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author Tokarchuk, Evgeniia
Nachesa, Maya K.
Troshin, Sergey
Niculae, Vlad
author_facet Tokarchuk, Evgeniia
Nachesa, Maya K.
Troshin, Sergey
Niculae, Vlad
contents Modern neural translation models based on the Transformer architecture are known for their high performance, particularly when trained on high-resource datasets. A standard next-token prediction training strategy, while widely adopted in practice, may lead to overlooked artifacts such as representation collapse. Previous works have shown that this problem is especially pronounced in the representation of the deeper Transformer layers, where it often fails to efficiently utilize the geometric space. Representation collapse is even more evident in end-to-end training of continuous-output neural machine translation, where the trivial solution would be to set all vectors to the same value. In this work, we analyze the dynamics of representation collapse at different levels of discrete and continuous NMT transformers throughout training. We incorporate an existing regularization method based on angular dispersion and demonstrate empirically that it not only mitigates collapse but also improves translation quality. Furthermore, we show that quantized models exhibit similar collapse behavior and that the benefits of regularization are preserved even after quantization.
format Preprint
id arxiv_https___arxiv_org_abs_2602_17287
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Representation Collapse in Machine Translation Through the Lens of Angular Dispersion
Tokarchuk, Evgeniia
Nachesa, Maya K.
Troshin, Sergey
Niculae, Vlad
Computation and Language
Machine Learning
Modern neural translation models based on the Transformer architecture are known for their high performance, particularly when trained on high-resource datasets. A standard next-token prediction training strategy, while widely adopted in practice, may lead to overlooked artifacts such as representation collapse. Previous works have shown that this problem is especially pronounced in the representation of the deeper Transformer layers, where it often fails to efficiently utilize the geometric space. Representation collapse is even more evident in end-to-end training of continuous-output neural machine translation, where the trivial solution would be to set all vectors to the same value. In this work, we analyze the dynamics of representation collapse at different levels of discrete and continuous NMT transformers throughout training. We incorporate an existing regularization method based on angular dispersion and demonstrate empirically that it not only mitigates collapse but also improves translation quality. Furthermore, we show that quantized models exhibit similar collapse behavior and that the benefits of regularization are preserved even after quantization.
title Representation Collapse in Machine Translation Through the Lens of Angular Dispersion
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2602.17287