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      <dc:title>A novel continual learning approach for competitive neural networks</dc:title>
      <dc:creator>Fernández-Rodríguez, Jose David</dc:creator>
      <dc:creator>Maza Quiroga, Rosa María</dc:creator>
      <dc:creator>Palomo-Ferrer, Esteban José</dc:creator>
      <dc:creator>Ortiz-de-Lazcano-Lobato, Juan Miguel</dc:creator>
      <dc:creator>López-Rubio, Ezequiel</dc:creator>
      <dc:subject>Redes neuronales (Informática)</dc:subject>
      <dc:subject>Aprendizaje automático (Inteligencia artificial)</dc:subject>
      <dc:subject>Aprendizaje</dc:subject>
      <dc:description>Continual learning tries to address the stability-plasticity dilemma to avoid catastrophic forgetting when dealing with non-stationary distributions. Prior works focused on supervised or reinforcement learning, but few works have considered continual learning for unsupervised learning methods. In this paper, a novel approach to provide continual learning for competitive neural networks is proposed. To this end, we have proposed a different learning rate function that can cope with non-stationary distributions by adapting the model to learn continuously. Experimental results performed with different synthetic images that change over time confirm the performance of our proposal.</dc:description>
      <dc:date>2022-06-14T10:11:20Z</dc:date>
      <dc:date>2022-06-14T10:11:20Z</dc:date>
      <dc:date>2022-06-14</dc:date>
      <dc:date>2022</dc:date>
      <dc:type>conference output</dc:type>
      <dc:identifier>https://hdl.handle.net/10630/24361</dc:identifier>
      <dc:language>eng</dc:language>
      <dc:relation>9th International Work-Conference on the Interplay Between Natural and Artificial Computation</dc:relation>
      <dc:relation>Puerto de la Cruz (Tenerife), España</dc:relation>
      <dc:relation>31 mayo /2022</dc:relation>
      <dc:rights>open access</dc:rights>
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