Biologically-Plausible Topology Improved Spiking Actor Network for Efficient Deep Reinforcement Learning
Duzhen Zhang, Qingyu Wang, Tielin Zhang, Bo Xu

TL;DR
This paper introduces BPT-SAN, a biologically-inspired spiking neural network with intra-layer connections designed to improve decision-making efficiency in deep reinforcement learning.
Contribution
It proposes a novel spiking actor network that incorporates intra-layer connections and dendritic nonlinearities, bridging the gap between biological plausibility and deep RL performance.
Findings
Enhanced spatial-temporal state representation.
Improved decision-making efficiency in DRL tasks.
More accurate biological simulation of neural dynamics.
Abstract
The success of Deep Reinforcement Learning (DRL) is largely attributed to utilizing Artificial Neural Networks (ANNs) as function approximators. Recent advances in neuroscience have unveiled that the human brain achieves efficient reward-based learning, at least by integrating spiking neurons with spatial-temporal dynamics and network topologies with biologically-plausible connectivity patterns. This integration process allows spiking neurons to efficiently combine information across and within layers via nonlinear dendritic trees and lateral interactions. The fusion of these two topologies enhances the network's information-processing ability, crucial for grasping intricate perceptions and guiding decision-making procedures. However, ANNs and brain networks differ significantly. ANNs lack intricate dynamical neurons and only feature inter-layer connections, typically achieved by direct…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural dynamics and brain function · Neuroscience and Neural Engineering
