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Aligning Artificial Neural Networks and Ontologies towards Explainable AI

Manuel de Sousa Ribeiro, João Leite

2021Proceedings of the AAAI Conference on Artificial Intelligence41 citationsDOIOpen Access PDF

Abstract

Neural networks have been the key to solve a variety of different problems. However, neural network models are still regarded as black boxes, since they do not provide any human-interpretable evidence as to why they output a certain result. We address this issue by leveraging on ontologies and building small classifiers that map a neural network model's internal state to concepts from an ontology, enabling the generation of symbolic justifications for the output of neural network models. Using an image classification problem as testing ground, we discuss how to map the internal state of a neural network to the concepts of an ontology, examine whether the results obtained by the established mappings match our understanding of the mapped concepts, and analyze the justifications obtained through this method.

Topics & Concepts

Artificial neural networkComputer scienceOntologyArtificial intelligenceVariety (cybernetics)Key (lock)Black boxNervous system network modelsMachine learningState (computer science)Deep neural networksTime delay neural networkTypes of artificial neural networksAlgorithmComputer securityEpistemologyPhilosophyExplainable Artificial Intelligence (XAI)