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Strategies for Safety Goal Decomposition for Neural Networks
Schwalbe, Gesina; Schels, Martin (2019): Strategies for Safety Goal Decomposition for Neural Networks, in: München: German Chapter of the ACM e.V.
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Conference:
3rd ACM Computer Science in Cars Symposium – Future Challenges in Artificial Intelligence & Security for Autonomous Vehicles ; Kaiserslautern
Publisher Information:
Year of publication:
2019
Pages:
Language:
English
Abstract:
Neural networks (NNs) have become a key technology for solving highly complex tasks, and require integration into future safety argumentations. New safety relevant aspects introduced by NN based algorithms are: representativity of test cases, robustness, inner representation and logic, and failure detection for NNs. In this paper, a general argumentation structure for safety cases respecting these four aspects is proposed together with possible sources of evidence.
GND Keywords:
Neuronales Netz ; Beweisführung ; Dekomposition ; Sicherheit
Keywords: ;  ; 
neural network
safety argumentation
safety goal decomposition
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RVK Classification:
Type:
Conferenceobject
Activation date:
May 10, 2022
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https://fis.uni-bamberg.de/handle/uniba/53985