New insights into olivo-cerebellar circuits for learning from a small training sample.

Journal: Current opinion in neurobiology
Published Date:

Abstract

Artificial intelligence such as deep neural networks exhibited remarkable performance in simulated video games and 'Go'. In contrast, most humanoid robots in the DARPA Robotics Challenge fell down to ground. The dramatic contrast in performance is mainly due to differences in the amount of training data, which is huge and small, respectively. Animals are not allowed with millions of the failed trials, which lead to injury and death. Humans fall only several thousand times before they balance and walk. We hypothesize that a unique closed-loop neural circuit formed by the Purkinje cells, the cerebellar deep nucleus and the inferior olive in and around the cerebellum and the highest density of gap junctions, which regulate synchronous activities of the inferior olive nucleus, are computational machinery for learning from a small sample. We discuss recent experimental and computational advances associated with this hypothesis.

Authors

  • Isao T Tokuda
    Department of Mechanical Engineering, Ritsumeikan University, Shiga, Japan.
  • Huu Hoang
    ATR Brain Information Communication Research Laboratory Group, Advanced Telecommunications Research Institute International, Hikaridai, Kyoto, Japan.
  • Mitsuo Kawato
    ATR Brain Information Communication Research Laboratory Group, Advanced Telecommunications Research Institute International, Hikaridai, Kyoto, Japan. Electronic address: kawato@atr.jp.