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The paper introduces SeDT, a training-free inference-time method that improves LLM reliability in multi-turn conversations by annotating conversation history with cumulative relevance scores from three signals, achieving up to +37.7% performance gains on the Lost-in-Conversation benchmark.
This paper introduces Found in Conversation (FiC), a training framework using View-Asymmetric Self-Distillation to close the multi-turn performance gap in LLMs. The method teaches models to recover single-turn competence from underspecified multi-turn prompts, achieving 92-100% recovery across model families and sizes.