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Integrating Machine Learning into Belief-Desire-Intention Agents: Current Advances and Open Challenges

23 October 2025
Andrea Agiollo
Andrea Omicini
    LM&RoAI4CE
ArXiv (abs)PDFHTML
Main:21 Pages
14 Figures
Bibliography:10 Pages
15 Tables
Abstract

Thanks to the remarkable human-like capabilities of machine learning (ML) models in perceptual and cognitive tasks, frameworks integrating ML within rational agent architectures are gaining traction. Yet, the landscape remains fragmented and incoherent, often focusing on embedding ML into generic agent containers while overlooking the expressive power of rational architectures--such as Belief-Desire-Intention (BDI) agents. This paper presents a fine-grained systematisation of existing approaches, using the BDI paradigm as a reference. Our analysis illustrates the fast-evolving literature on rational agents enhanced by ML, and identifies key research opportunities and open challenges for designing effective rational ML agents.

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