Litcius/Paper detail

Multi-Sacle Dynamic Coding Improved Spiking Actor Network for Reinforcement Learning

Duzhen Zhang, Tielin Zhang, Shuncheng Jia, Bo Xu

2022Proceedings of the AAAI Conference on Artificial Intelligence32 citationsDOIOpen Access PDF

Abstract

With the help of deep neural networks (DNNs), deep reinforcement learning (DRL) has achieved great success on many complex tasks, from games to robotic control. Compared to DNNs with partial brain-inspired structures and functions, spiking neural networks (SNNs) consider more biological features, including spiking neurons with complex dynamics and learning paradigms with biologically plausible plasticity principles. Inspired by the efficient computation of cell assembly in the biological brain, whereby memory-based coding is much more complex than readout, we propose a multiscale dynamic coding improved spiking actor network (MDC-SAN) for reinforcement learning to achieve effective decision-making. The population coding at the network scale is integrated with the dynamic neurons coding (containing 2nd-order neuronal dynamics) at the neuron scale towards a powerful spatial-temporal state representation. Extensive experimental results show that our MDC-SAN performs better than its counterpart deep actor network (based on DNNs) on four continuous control tasks from OpenAI gym. We think this is a significant attempt to improve SNNs from the perspective of efficient coding towards effective decision-making, just like that in biological networks.

Topics & Concepts

Reinforcement learningComputer scienceSpiking neural networkArtificial intelligenceNetwork dynamicsNeural codingCoding (social sciences)Artificial neural networkMachine learningMathematicsDiscrete mathematicsStatisticsAdvanced Memory and Neural ComputingNeural dynamics and brain functionNeuroscience and Neural Engineering