This paper delves into the complex issue of neural network convergence, highlighting the theoretical challenges posed by non-convex optimization problems. By introducing the concept of cohesive-convergence groups, the author aims to provide a new perspective on optimization processes in artificial neural networks. The study focuses on defining key components of the convergence process and presents experimental results validating the existence and utility of cohesive-convergence groups. Additionally, it explores the relationship between generative groups and bias-variance concepts, offering insights into fundamental aspects of neural network behavior.
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by Thien An L. ... om arxiv.org 03-12-2024
https://arxiv.org/pdf/2403.05610.pdfDiepere vragen