AI RESEARCH

Prospective Compression in Human Abstraction Learning

arXiv CS.AI

ArXi:2605.09985v1 Announce Type: new A core challenge in program synthesis is online library learning: the incremental acquisition of reusable abstractions under uncertainty about future task demands. Existing algorithms treat library learning as retrospective compression over a static task distribution, where the learned library is determined by the corpus of past tasks. However, real-world learning domains are often non-stationary, with tasks arising from a generative process that evolves over time.