The more intelligent systems based on sub-symbolic techniques pervade our everyday lives, the less human can understand them. This is why symbolic approaches are getting more and more attention in the general effort to make AI interpretable, explainable, and trustable. Understanding the current state of the art of AI techniques integrating symbolic and sub-symbolic approaches is then of paramount importance, nowadays—in particular in the XAI perspective. This is why this paper provides an overview of the main symbolic/sub-symbolic integration techniques, focussing in particular on those targeting explainable AI systems.

On the integration of symbolic and sub-symbolic techniques for XAI: A survey / Roberta Calegari, Giovanni Ciatto, Andrea Omicini. - In: INTELLIGENZA ARTIFICIALE. - ISSN 1724-8035. - STAMPA. - 14:1(2020), pp. 7-32. [10.3233/IA-190036]

On the integration of symbolic and sub-symbolic techniques for XAI: A survey

Roberta Calegari;Giovanni Ciatto;Andrea Omicini
2020

Abstract

The more intelligent systems based on sub-symbolic techniques pervade our everyday lives, the less human can understand them. This is why symbolic approaches are getting more and more attention in the general effort to make AI interpretable, explainable, and trustable. Understanding the current state of the art of AI techniques integrating symbolic and sub-symbolic approaches is then of paramount importance, nowadays—in particular in the XAI perspective. This is why this paper provides an overview of the main symbolic/sub-symbolic integration techniques, focussing in particular on those targeting explainable AI systems.
2020
On the integration of symbolic and sub-symbolic techniques for XAI: A survey / Roberta Calegari, Giovanni Ciatto, Andrea Omicini. - In: INTELLIGENZA ARTIFICIALE. - ISSN 1724-8035. - STAMPA. - 14:1(2020), pp. 7-32. [10.3233/IA-190036]
Roberta Calegari, Giovanni Ciatto, Andrea Omicini
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/772707
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