One of the challenges for safety engineering in the coming years is to fully exploit the potential of artificial intelligence technologies, while maintaining a high level of interpretability, trustworthiness, and accountability. In this position paper, we argue that neuro-symbolic artificial intelligence approaches could represent the ideal framework to address tasks in the field of safety engineering, by combining the capability of neural networks of processing large volumes of data and of handling uncertainty, with the expressive power of symbolic approaches in modeling domain knowledge, rules, and constraints.
Neuro-Symbolic Artificial Intelligence for Safety Engineering / Carnevali L.; Lippi M.. - ELETTRONICO. - 14989:(2024), pp. 438-445. (Intervento presentato al convegno 19th Workshop on Dependable Smart Embedded and Cyber-Physical Systems and Systems-of-Systems, DECSoS 2024, 11th International Workshop on Next Generation of System Assurance Approaches for Critical Systems, SASSUR 2024, Towards A Safer Systems architecture Through Security, TOASTS 2024 and 7th International Workshop on Artificial Intelligence Safety Engineering, WAISE 2024 held in conjunction with the 43rd International Conference on Computer Safety, Reliability, and Security, SAFECOMP 2024 tenutosi a ita nel 2024) [10.1007/978-3-031-68738-9_35].
Neuro-Symbolic Artificial Intelligence for Safety Engineering
Carnevali L.;Lippi M.
2024
Abstract
One of the challenges for safety engineering in the coming years is to fully exploit the potential of artificial intelligence technologies, while maintaining a high level of interpretability, trustworthiness, and accountability. In this position paper, we argue that neuro-symbolic artificial intelligence approaches could represent the ideal framework to address tasks in the field of safety engineering, by combining the capability of neural networks of processing large volumes of data and of handling uncertainty, with the expressive power of symbolic approaches in modeling domain knowledge, rules, and constraints.File | Dimensione | Formato | |
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