English

A nonlinear hidden layer enables actor-critic agents to learn multiple paired association navigation

Neural and Evolutionary Computing 2022-01-25 v2 Neurons and Cognition

Abstract

Navigation to multiple cued reward locations has been increasingly used to study rodent learning. Though deep reinforcement learning agents have been shown to be able to learn the task, they are not biologically plausible. Biologically plausible classic actor-critic agents have been shown to learn to navigate to single reward locations, but which biologically plausible agents are able to learn multiple cue-reward location tasks has remained unclear. In this computational study, we show versions of classic agents that learn to navigate to a single reward location, and adapt to reward location displacement, but are not able to learn multiple paired association navigation. The limitation is overcome by an agent in which place cell and cue information are first processed by a feedforward nonlinear hidden layer with synapses to the actor and critic subject to temporal difference error-modulated plasticity. Faster learning is obtained when the feedforward layer is replaced by a recurrent reservoir network.

Keywords

Cite

@article{arxiv.2106.13541,
  title  = {A nonlinear hidden layer enables actor-critic agents to learn multiple paired association navigation},
  author = {M Ganesh Kumar and Cheston Tan and Camilo Libedinsky and Shih-Cheng Yen and Andrew Yong-Yi Tan},
  journal= {arXiv preprint arXiv:2106.13541},
  year   = {2022}
}

Comments

31 pages, 8 figures. Acknowledgements revised

R2 v1 2026-06-24T03:35:39.622Z