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  Lack of Robustness in Artificial Neural Networks

Bethge, M. (2019). Lack of Robustness in Artificial Neural Networks. Neuroforum, 25(Supplement 1): S23-1, 179.

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Bethge, M1, Author              
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 Abstract: Deep neural networks have become a ubiquitous tool in a broad range of AI applications. Resembling important aspects of rapid feed-forward visual processing in the ventral stream they can be trained to match human behavior on standardized pattern recognition tasks. Outside the training distribution, however, decision making of artificial neural networks exhibits large discrepancies to biological vision systems. I will give an overview on the lack of robustness in deep neural networks and present recent results of my lab to quantify and overcome these discrepancies.

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 Dates: 2019-02
 Publication Status: Published in print
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Title: 13th Göttingen Meeting of the German Neuroscience Society, 37th Göttingen Neurobiology Conference
Place of Event: Göttingen, Germany
Start-/End Date: 2019-03-20 - 2019-03-23

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Title: Neuroforum
Source Genre: Journal
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Pages: - Volume / Issue: 25 (Supplement 1) Sequence Number: S23-1 Start / End Page: 179 Identifier: ISSN: 0947-0875
CoNE: https://pure.mpg.de/cone/journals/resource/110978984249776