A Self Organizing Recurrent Neural Network

  • Chen Q
  • Qiao J
  • Zou Y
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Abstract

Understanding the dynamics of recurrent neural networks is crucial for explaining how the brain processes information. In the neocortex, a range of different plasticity mechanisms are shaping recurrent networks into effective information processing circuits that learn appropriate representations for time-varying sensory stimuli. However, it has been diffi cult to mimic these abilities in artifi cial neural network models. Here we introduce SORN, a self-organizing recurrent network. It combines three distinct forms of local plasticity to learn spatio-temporal patterns in its input while maintaining its dynamics in a healthy regime suitable for learning. The SORN learns to encode information in the form of trajectories through its high-dimensional state space reminiscent of recent biological fi ndings on cortical coding. All three forms of plasticity are shown to be essential for the network’s success.

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Chen, Q., Qiao, J., & Zou, Y. M. (2017). A Self Organizing Recurrent Neural Network. International Journal of Artificial Intelligence & Applications, 8(4), 11–23. https://doi.org/10.5121/ijaia.2017.8402

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