Explainable AI (XAI) aims to address the human need for safe and reliable AI systems. However, numerous surveys emphasize the absence of a sound mathematical formalization of key XAI notions—remarkably including the term “explanation”, which still lacks a precise definition. To bridge this gap, this paper introduces a unifying mathematical framework allowing the rigorous definition of key XAI notions and processes, using the well-funded formalism of Category theory. In particular, we show that the introduced framework allows us to: (i) model existing learning schemes and architectures in both XAI and AI in general, (ii) formally define the term “explanation”, (iii) establish a theoretical basis for XAI taxonomies, and (iv) analyze commonly overlooked aspects of explaining methods. As a consequence, the proposed categorical framework represents a significant step towards a sound theoretical foundation of explainable AI by providing an unambiguous language to describe and model concepts, algorithms, and systems, thus also promoting research in XAI and collaboration between researchers from diverse fields, such as computer science, cognitive science, and abstract mathematics.

Categorical Foundation of Explainable AI : a Unifying Theory

Giannini, Francesco
;
2024

Abstract

Explainable AI (XAI) aims to address the human need for safe and reliable AI systems. However, numerous surveys emphasize the absence of a sound mathematical formalization of key XAI notions—remarkably including the term “explanation”, which still lacks a precise definition. To bridge this gap, this paper introduces a unifying mathematical framework allowing the rigorous definition of key XAI notions and processes, using the well-funded formalism of Category theory. In particular, we show that the introduced framework allows us to: (i) model existing learning schemes and architectures in both XAI and AI in general, (ii) formally define the term “explanation”, (iii) establish a theoretical basis for XAI taxonomies, and (iv) analyze commonly overlooked aspects of explaining methods. As a consequence, the proposed categorical framework represents a significant step towards a sound theoretical foundation of explainable AI by providing an unambiguous language to describe and model concepts, algorithms, and systems, thus also promoting research in XAI and collaboration between researchers from diverse fields, such as computer science, cognitive science, and abstract mathematics.
2024
Settore INFO-01/A - Informatica
Settore IINF-05/A - Sistemi di elaborazione delle informazioni
2nd World Conference on Explainable Artificial Intelligence, xAI 2024
Valletta, Malta
July 17–19, 2024
Explainable Artificial Intelligence: Second World Conference, xAI 2024, Valletta, Malta, July 17–19, 2024, Proceedings, Part III
Springer
9783031637995
Category Theory; Explainable AI; XAI Foundations and Taxonomies
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11384/147946
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