Neural circuits for learning context-dependent associations of stimuli.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

The use of reinforcement learning combined with neural networks provides a powerful framework for solving certain tasks in engineering and cognitive science. Previous research shows that neural networks have the power to automatically extract features and learn hierarchical decision rules. In this work, we investigate reinforcement learning methods for performing a context-dependent association task using two kinds of neural network models (using continuous firing rate neurons), as well as a neural circuit gating model. The task allows examination of the ability of different models to extract hierarchical decision rules and generalize beyond the examples presented to the models in the training phase. We find that the simple neural circuit gating model, trained using response-based regulation of Hebbian associations, performs almost at the same level as a reinforcement learning algorithm combined with neural networks trained with more sophisticated back-propagation of error methods. A potential explanation is that hierarchical reasoning is the key to performance and the specific learning method is less important.

Authors

  • Henghui Zhu
    Division of Systems Engineering, Boston University, 15 Saint Mary's Street, Brookline, MA 02446, United States. Electronic address: henghuiz@bu.edu.
  • Ioannis Ch Paschalidis
    Department of Electrical and Computer Engineering and Division of Systems Engineering, Boston University, Boston, MA.
  • Michael E Hasselmo
    Center for Memory and Brain and Graduate Program for Neuroscience, Boston University, 2 Cummington Mall, Boston, MA 02215, USA.