The content presents a new geometric perspective on efficient learning, based on the idea of manifold untangling and tangling.
The key insights are:
Manifold untangling can be achieved by introducing context dependency, which transforms supervised learning into unsupervised learning by directly fitting the data in a high-dimensional space. This leads to linear separability in the lifted space.
Manifold tangling, the dual process of untangling, can be implemented via an integral transform that collapses the context variables, restoring the original low-dimensional representation. This provides generalization without the risk of over-generalization.
The pairing of manifold untangling and tangling operators forms a tangling-untangling cycle (TUC), which can be hierarchically extended using Cartesian products and fractal geometry.
The biological implementation of TUC is connected to polychronization neural groups (PNG) and the sleep-wake cycle (SWC), providing a computational model for various cognitive functions.
The TUC framework is applied to model sensorimotor and social interactions, demonstrating its versatility in understanding embodied cognition and the role of context in efficient learning.
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arxiv.org
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by Xin Li kl. arxiv.org 04-09-2024
https://arxiv.org/pdf/2404.05484.pdfDybere Forespørgsler