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Steering Large Language Models for Machine Translation Personalization

Strategies including prompting and contrastive frameworks using latent concepts from sparse autoencoders effectively personalize LLM translations in low-resource settings while maintaining quality.

Year
2025
Venue
arXiv 2025
Authors
5
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arxiv.org/abs/2505.16612ARXIV-DEFAULT
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Abstract

High-quality machine translation systems based on large language models (LLMs) have simplified the production of personalized translations reflecting specific stylistic constraints. However, these systems still struggle in settings where stylistic requirements are less explicit and might be harder to convey via prompting. We explore various strategies for personalizing LLM-generated translations in low-resource settings, focusing on the challenging literary translation domain. We explore prompting strategies and inference-time interventions for steering model generations towards a personalized style, and propose a contrastive framework exploiting latent concepts extracted from sparse autoencoders to identify salient personalization properties. Our results show that steering achieves strong personalization while preserving translation quality. We further examine the impact of steering on LLM representations, finding model layers with a relevant impact for personalization are impacted similarly by multi-shot prompting and our steering method, suggesting similar mechanism at play.

Authors

5