Regularization of Neural Networks using DropConnect
Li Wan, Matthew D. Zeiler, Sixin Zhang, Yann Lecun, Rob Fergus
International review of cytology, 2013
Abstract
This research paper explore the methodology and findings associated with International review of cytology. The study delves into the core aspects of the research field, providing significant data and citation impact. (Full abstract processing is available via the OpenAlex API).
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