AI RESEARCH
AuthorMix: Modular Authorship Style Transfer via Layer-wise Adapter Mixing
arXiv CS.AI
•
ArXi:2603.23069v1 Announce Type: cross The task of authorship style transfer involves rewriting text in the style of a target author while preserving the meaning of the original text. Existing style transfer methods train a single model on large corpora to model all target styles at once: this high-cost approach offers limited flexibility for target-specific adaptation, and often sacrifices meaning preservation for style transfer. In this paper, we propose AuthorMix: a lightweight, modular, and interpretable style transfer framework.