On the approximation of rough functions with deep neural networks
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Publication:2089012
DOI10.1007/s40324-022-00299-wOpenAlexW3047132706WikidataQ114219219 ScholiaQ114219219MaRDI QIDQ2089012
Tim De Ryck, Deep Ray, Siddhartha Mishra
Publication date: 6 October 2022
Published in: S\(\vec{\text{e}}\)MA Journal (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/1912.06732
Uses Software
Cites Work
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