Contributions by metaplasticity to solving the Catastrophic Forgetting Problem.

Journal: Trends in neurosciences
Published Date:

Abstract

Catastrophic forgetting (CF) refers to the sudden and severe loss of prior information in learning systems when acquiring new information. CF has been an Achilles heel of standard artificial neural networks (ANNs) when learning multiple tasks sequentially. The brain, by contrast, has solved this problem during evolution. Modellers now use a variety of strategies to overcome CF, many of which have parallels to cellular and circuit functions in the brain. One common strategy, based on metaplasticity phenomena, controls the future rate of change at key connections to help retain previously learned information. However, the metaplasticity properties so far used are only a subset of those existing in neurobiology. We propose that as models become more sophisticated, there could be value in drawing on a richer set of metaplasticity rules, especially when promoting continual learning in agents moving about the environment.

Authors

  • Peter Jedlicka
    Frankfurt Institute for Advanced Studies (FIAS), Frankfurt, Germany.
  • Matus Tomko
    ICAR3R - Interdisciplinary Centre for 3Rs in Animal Research, Faculty of Medicine, Justus Liebig University, Giessen, Germany; Institute of Molecular Physiology and Genetics, Centre of Biosciences, Slovak Academy of Sciences, Bratislava, Slovakia.
  • Anthony Robins
    Department of Computer Science, University of Otago, 133 Union Street East, Dunedin 9016, New Zealand. Electronic address: anthony@cs.otago.ac.nz.
  • Wickliffe C Abraham
    Department of Psychology, Brain Health Research Centre, University of Otago, Dunedin 9054, New Zealand. Electronic address: cliff.abraham@otago.ac.nz.