A Natural Lottery Ticket Winner: Reinforcement Learning with Ordinary Neural Circuits

TitleA Natural Lottery Ticket Winner: Reinforcement Learning with Ordinary Neural Circuits
Publication TypeConference Paper
Year of Publication2020
AuthorsHasani, Ramin, Lechner Mathias, Amini Alexander, Rus Daniela, and Grosu Radu
EditorDaumé, III, Hal, and Singh Aarti
Conference NameProceedings of the 37th International Conference on Machine Learning
Date Published13–18 Jul
PublisherPMLR
Abstract

We propose a neural information processing system obtained by re-purposing the function of a biological neural circuit model to govern simulated and real-world control tasks. Inspired by the structure of the nervous system of the soil-worm, C. elegans, we introduce ordinary neural circuits (ONCs), defined as the model of biological neural circuits reparameterized for the control of alternative tasks. We first demonstrate that ONCs realize networks with higher maximum flow compared to arbitrary wired networks. We then learn instances of ONCs to control a series of robotic tasks, including the autonomous parking of a real-world rover robot. For reconfiguration of the purpose of the neural circuit, we adopt a search-based optimization algorithm. Ordinary neural circuits perform on par and, in some cases, significantly surpass the performance of contemporary deep learning models. ONC networks are compact, 77% sparser than their counterpart neural controllers, and their neural dynamics are fully interpretable at the cell-level.

URLhttp://proceedings.mlr.press/v119/hasani20a.html