AI RESEARCH
Self-supervised local learning rules learn the hidden hierarchical structure of high-dimensional data
arXiv CS.LG
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ArXi:2605.18557v1 Announce Type: new The brain learns abstract representations of high-dimensional sensory input, but the plasticity rules that enable such learning are unknown. We study biologically plausible algorithms on the Random Hierarchy Model (RHM), an artificial dataset designed to investigate how deep neural networks learn the intrinsic hierarchical structure of high-dimensional data. We focus on two types of local learning rules that avoid both a long convergence time and the use of a symmetric error network.