SHIFT: Gate-Modulated Activation Steering for Knowledge Conflict Mitigation
The paper introduces SHIFT, a novel framework that mitigates knowledge conflicts in Retrieval-Augmented Generation (RAG) by reformulating neuron-level modification as learnable gate modulation. This approach allows large language models to adaptively regulate internal activations to resolve conflicts between retrieved context and parametric knowledge.