
Complex problem solving involves representing structured knowledge, reasoning and learning, all at once. In this prospective study, we make explicit how a reinforcement learning paradigm can be applied to a symbolic representation of a concrete problem-solving task, modeled here by an ontology. This preliminary paper is only a set of ideas while feasibility verification is still a perspective of this work.
[INFO.INFO-AI] Computer Science [cs]/Artificial Intelligence [cs.AI], Models for Learning Sciences, Ontology Edit Distances, [SCCO.NEUR] Cognitive science/Neuroscience, [SHS.EDU] Humanities and Social Sciences/Education, Reinforcement Symbolic Learning
[INFO.INFO-AI] Computer Science [cs]/Artificial Intelligence [cs.AI], Models for Learning Sciences, Ontology Edit Distances, [SCCO.NEUR] Cognitive science/Neuroscience, [SHS.EDU] Humanities and Social Sciences/Education, Reinforcement Symbolic Learning
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