AI RESEARCH

Universal Quantum Transformer

arXiv CS.AI

ArXi:2606.00045v1 Announce Type: new Classical continuous-space neural networks fundamentally struggle to lock into exact mathematical symmetries, such as modular arithmetic and non-commutative algebra. To approximate these discrete logical rules, they often rely on massive parameter scaling, resulting in stochastic instability even after delayed generalization phenomena known as grokking. Here, we