Montavon, 2020 - Google Patents

Introduction to neural networks

Montavon, 2020

Document ID
3572144730120384379
Author
Montavon G
Publication year
Publication venue
Machine learning meets quantum physics

External Links

Snippet

Abstract Machine learning has become an essential tool for extracting regularities in the data and for making inferences. Neural networks, in particular, provide the scalability and flexibility that is needed to convert complex datasets into structured and well-generalizing …
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Classifications

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