Continual Speaker Identity Unlearning with Minimal Interference 事件

BREAKTHROUGH2026-05-26影响: HIGH

Continual Speaker Identity Unlearning with Minimal Interference arXiv:2605.25962v1 Announce Type: cross Abstract: Machine unlearning removes designated concepts or knowledge from pre-trained models. Recent work has extended this paradigm to speaker identity unlearning in zero-shot text-to-speech (ZS-TTS), the task of selectively erasing a model's ability to replicate a speaker's voice. Existing methods, however, quietly assume all unlearning requests arrive at once; an unrealistic assumption, s