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OpenAI ARTICLE ARTIKEL 22 August 2019 22 augustus 2019

Testing robustness against unforeseen adversaries Testing robustness against unforeseen adversaries

We’ve developed a method to assess whether a neural network classifier can reliably defend against adversarial attacks not seen during training. Our method yields a new metric, UAR (Unforeseen Attack Robustness), which evaluates the robustness of a single model against an unanticipated attack, and highlights the need to measure performance across a more diverse range of unforeseen attacks. We’ve developed a method to assess whether a neural network classifier can reliably defend against adversarial attacks not seen during training. Our method yields a new metric, UAR (Unforeseen Attack Robustness), which evaluates the robustness of a single model against an unanticipated attack, and highlights the need to measure performance across a more diverse range of unforeseen attacks.

Article details Artikelgegevens
AI maker AI-maker OpenAI Type Type Article Artikel Published Gepubliceerd 22 August 2019 22 augustus 2019 Updates Updates Videos Video's View original article Bekijk origineel artikel
Why it matters Waarom dit telt

Quick editorial signal Snelle redactionele duiding

1 min
Impact Impact

A product update that may change what people can do with AI this week. Een productupdate die kan veranderen wat mensen deze week met AI kunnen doen.

Audience Voor wie AI users AI-gebruikers
Level Niveau Expert Expert
  • Track this as a OpenAI update, not just a standalone headline. Bekijk dit als OpenAI-update, niet alleen als losse headline.
  • Good signal for whether this topic deserves a deeper guide later. Goed signaal of dit onderwerp later een uitgebreidere gids verdient.
  • Likely worth revisiting after people have used the release in practice. Waarschijnlijk de moeite waard om opnieuw te bekijken zodra mensen het in praktijk gebruiken.
model

We’ve developed a method to assess whether a neural network classifier can reliably defend against adversarial attacks not seen during training. Our method yields a new metric, UAR (Unforeseen Attack Robustness), which evaluates the robustness of a single model against an unanticipated attack, and highlights the need to measure performance across a more diverse range of unforeseen attacks.

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