Safety engineering and Artificial Intelligence (AI) are two fields which still need investigation on their reciprocal interactions. Safety should be guaranteed when autonomous decision may lead to risk for the environment and the human. The present work addresses how Support Vector Data Description (SVDD) can be re-designed to detect safety regions in a cyber physical system with zero statistical error. Rule-based knowledge extraction is also presented, to let the SVDD be understandable. Two applications are considered for performance evaluation: DNS Tunneling detection and Region of Attraction (ROA) estimation of dynamic systems.Results demonstrate how the new SVDD and its intelligible representation are both suitable in designing safety regions, still maximizing the space of the working conditions.

A New SVDD Approach to Reliable and eXplainable AI

Carlevaro A
Primo
Software
;
Mongelli M
Ultimo
Conceptualization
2021

Abstract

Safety engineering and Artificial Intelligence (AI) are two fields which still need investigation on their reciprocal interactions. Safety should be guaranteed when autonomous decision may lead to risk for the environment and the human. The present work addresses how Support Vector Data Description (SVDD) can be re-designed to detect safety regions in a cyber physical system with zero statistical error. Rule-based knowledge extraction is also presented, to let the SVDD be understandable. Two applications are considered for performance evaluation: DNS Tunneling detection and Region of Attraction (ROA) estimation of dynamic systems.Results demonstrate how the new SVDD and its intelligible representation are both suitable in designing safety regions, still maximizing the space of the working conditions.
2021
Istituto di Elettronica e di Ingegneria dell'Informazione e delle Telecomunicazioni - IEIIT
Support Vector Data Description
Safe AI
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/439594
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