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dc.contributor.authorGüitta López, Lucíaes-ES
dc.contributor.authorBoal Martín-Larrauri, Jaimees-ES
dc.contributor.authorLópez López, Álvaro Jesúses-ES
dc.date.accessioned2026-04-20T04:24:30Z
dc.date.available2026-04-20T04:24:30Z
dc.date.issued2026-04-01es_ES
dc.identifier.issn2673-2688es_ES
dc.identifier.urihttps://doi.org/10.3390/ai7040120es_ES
dc.identifier.urihttp://hdl.handle.net/11531/109669
dc.descriptionArtículos en revistases_ES
dc.description.abstractThe use of virtual environments to collect the experience required by deep reinforcement learning models is accelerating the deployment of these algorithms in industrial environments. However, once the experience-gathering problem is solved, it is necessary to address how to efficiently transfer the knowledge from the virtual scenario to reality. This paper focuses on examining Progressive Neural Networks (PNNs) as a promising transfer learning technique. The analyses carried out range from studying the capabilities and limits of the layers responsible for learning the state representation from a pixel space, which could arguably be the convolutional blocks, to the forgetting agents suffer when learning a new task. Introducing controlled visual changes in the environment scene can lead to a performance degradation of 50.3% in the worst-case scenario. These visual discrepancies significantly impact the agent’s learning time and accuracy when using a PNN architecture. Regarding the PNN forgetting assessment, partial forgetting occurs in two of the three environments analyzed, those where the agent masters its new task. This could be due to a balance between the relevance of the new features learned and the ones inherited from the teacher agent.es-ES
dc.description.abstractThe use of virtual environments to collect the experience required by deep reinforcement learning models is accelerating the deployment of these algorithms in industrial environments. However, once the experience-gathering problem is solved, it is necessary to address how to efficiently transfer the knowledge from the virtual scenario to reality. This paper focuses on examining Progressive Neural Networks (PNNs) as a promising transfer learning technique. The analyses carried out range from studying the capabilities and limits of the layers responsible for learning the state representation from a pixel space, which could arguably be the convolutional blocks, to the forgetting agents suffer when learning a new task. Introducing controlled visual changes in the environment scene can lead to a performance degradation of 50.3% in the worst-case scenario. These visual discrepancies significantly impact the agent’s learning time and accuracy when using a PNN architecture. Regarding the PNN forgetting assessment, partial forgetting occurs in two of the three environments analyzed, those where the agent masters its new task. This could be due to a balance between the relevance of the new features learned and the ones inherited from the teacher agent.en-GB
dc.language.isoen-GBes_ES
dc.sourceRevista: AI, Periodo: 1, Volumen: online, Número: 4, Página inicial: 120-1, Página final: 120-25es_ES
dc.subject.otherInstituto de Investigación Tecnológica (IIT)es_ES
dc.titleEvaluating the Perception, Understanding, and Forgetting of Progressive Neural Networks: A Quantitative and Qualitative Analysises_ES
dc.typeinfo:eu-repo/semantics/articlees_ES
dc.description.versioninfo:eu-repo/semantics/publishedVersiones_ES
dc.rights.holderes_ES
dc.rights.accessRightsinfo:eu-repo/semantics/openAccesses_ES
dc.keywordsdeep reinforcement learning; progressive neural networks; sim-to-real; sample efficiency; representation learninges-ES
dc.keywordsdeep reinforcement learning; progressive neural networks; sim-to-real; sample efficiency; representation learningen-GB


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