As the Internet of Things (IoT) evolves into an Internet of Everything (IoE), adapting Artificial Intelligence (AI) and Machine Learning (ML) approaches to pervasive computing devices is not enough. Collaborative intelligence is required, calling for on-device AI frameworks combining adequate accuracy and computational efficiency levels with incremental learning on continuous data streams, federated learning in distributed architectures and symbolic explainability formalisms to foster trustworthiness with interpretable trained models and comprehensible prediction outcomes. To fill this gap, the paper introduces a five-star rating for on-device AI based on the Semantic Web of Everything (SWoE) paradigm, and presents the five-star \mafaldatwo framework. It combines statistical data processing with Knowledge Graph technologies for information representation and automated reasoning to support: semi-automatic or fully data-driven ontology definition; on-device training to generate highly interpretable semantics-based models; prediction framed as a semantic matchmaking problem, exploiting non-standard reasoning services endowed with logic-based justifications to provide comprehensible results as well as counterfactual and contrastive explanations. An experimental campaign on four publicly available datasets has been carried out to validate the efficiency and accuracy of the proposal, along with federated learning and explainability examples.

On-Device Explainable Artificial Intelligence for the Semantic Web of Everything / Loconte, Davide; Ieva, Saverio; Mascellaro, Grazia; Pinto, Agnese; Loseto, Giuseppe; Scioscia, Floriano; Ruta, Michele. - In: FUTURE GENERATION COMPUTER SYSTEMS. - ISSN 0167-739X. - (In corso di stampa).

On-Device Explainable Artificial Intelligence for the Semantic Web of Everything

Davide Loconte;Saverio Ieva;Grazia Mascellaro;Agnese Pinto;Floriano Scioscia;Michele Ruta
In corso di stampa

Abstract

As the Internet of Things (IoT) evolves into an Internet of Everything (IoE), adapting Artificial Intelligence (AI) and Machine Learning (ML) approaches to pervasive computing devices is not enough. Collaborative intelligence is required, calling for on-device AI frameworks combining adequate accuracy and computational efficiency levels with incremental learning on continuous data streams, federated learning in distributed architectures and symbolic explainability formalisms to foster trustworthiness with interpretable trained models and comprehensible prediction outcomes. To fill this gap, the paper introduces a five-star rating for on-device AI based on the Semantic Web of Everything (SWoE) paradigm, and presents the five-star \mafaldatwo framework. It combines statistical data processing with Knowledge Graph technologies for information representation and automated reasoning to support: semi-automatic or fully data-driven ontology definition; on-device training to generate highly interpretable semantics-based models; prediction framed as a semantic matchmaking problem, exploiting non-standard reasoning services endowed with logic-based justifications to provide comprehensible results as well as counterfactual and contrastive explanations. An experimental campaign on four publicly available datasets has been carried out to validate the efficiency and accuracy of the proposal, along with federated learning and explainability examples.
In corso di stampa
On-Device Explainable Artificial Intelligence for the Semantic Web of Everything / Loconte, Davide; Ieva, Saverio; Mascellaro, Grazia; Pinto, Agnese; Loseto, Giuseppe; Scioscia, Floriano; Ruta, Michele. - In: FUTURE GENERATION COMPUTER SYSTEMS. - ISSN 0167-739X. - (In corso di stampa).
File in questo prodotto:
Non ci sono file associati a questo prodotto.

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11589/294960
Citazioni
  • Scopus ND
  • ???jsp.display-item.citation.isi??? ND
social impact