AI RESEARCH

Learning to Remember, Learn, and Forget in Attention-Based Models

arXiv CS.AI

ArXi:2602.09075v3 Announce Type: replace-cross In-Context Learning (ICL) in transformers acts as an online associative memory and is believed to underpin their high performance on complex sequence processing tasks. However, in gated linear attention models, this memory has a fixed capacity and is prone to interference, especially for long sequences. We propose Palimpsa, a self-attention model that views ICL as a continual learning problem that must address a stability-plasticity dilemma.