AI RESEARCH

Pruning-induced phases in fully-connected neural networks: the eumentia, the dementia, and the amentia

arXiv CS.LG

ArXi:2603.12316v1 Announce Type: cross Modern neural networks are heavily overparameterized, and pruning, which removes redundant neurons or connections, has emerged as a key approach to compressing them without sacrificing performance. However, while practical pruning methods are well developed, whether pruning induces sharp phase transitions in the neural networks and, if so, to what universality class they belong, remain open questions. To address this, we study fully-connected neural networks trained on MNIST, independently varying the dropout (i.e., removing neurons) rate at both the