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Decorrelated Soft Actor-Critic for Efficient Deep Reinforcement Learning

Description

The effectiveness of credit assignment in reinforcement learning (RL) when dealing with high-dimensional data is influenced by the success of representation learning via deep neural networks, and has implications for the sample efficiency of deep RL algorithms. Input decorrelation has been previously introduced as a method to speed up optimization in neural networks, and has proven impactful in both efficient deep learning and as a method for effective representation learning for deep RL algorit

Source

http://arxiv.org/abs/2501.19133v1