CLJan 27, 2025

DialUp! Modeling the Language Continuum by Adapting Models to Dialects and Dialects to Models

CMU
arXiv:2501.16581v32 citationsh-index: 53ACL
Originality Incremental advance
AI Analysis

This addresses machine translation for low-resource dialects, which is incremental as it builds on existing cross-lingual methods.

The paper tackles the problem of low-resource dialects lacking machine translation support by adapting models to dialects and dialects to models, showing considerable performance gains for several dialects from four language families.

Most of the world's languages and dialects are low-resource, and lack support in mainstream machine translation (MT) models. However, many of them have a closely-related high-resource language (HRL) neighbor, and differ in linguistically regular ways from it. This underscores the importance of model robustness to dialectal variation and cross-lingual generalization to the HRL dialect continuum. We present DialUp, consisting of a training-time technique for adapting a pretrained model to dialectal data (M->D), and an inference-time intervention adapting dialectal data to the model expertise (D->M). M->D induces model robustness to potentially unseen and unknown dialects by exposure to synthetic data exemplifying linguistic mechanisms of dialectal variation, whereas D->M treats dialectal divergence for known target dialects. These methods show considerable performance gains for several dialects from four language families, and modest gains for two other language families. We also conduct feature and error analyses, which show that language varieties with low baseline MT performance are more likely to benefit from these approaches.

Foundations

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