Robustness remains a paramount concern in deep reinforcement learning (DRL), with randomized smoothing emerging as a key technique for enhancing this attribute. However, a notable gap exists in the performance of current smoothed DRL agents, often characterized by significantly low clean rewards and weak robustness. In response to this challenge, our study introduces innovative algorithms aimed at training effective smoothed robust DRL agents. We propose S-DQN and S-PPO, novel approaches that demonstrate remarkable improvements in clean rewards, empirical robustness, and robustness guarantee across standard RL benchmarks. Notably, our S-DQN and S-PPO agents not only significantly outperform existing smoothed agents by an average factor of $2.16\times$ under the strongest attack, but also surpass previous robustly-trained agents by an average factor of $2.13\times$. This represents a significant leap forward in the field. Furthermore, we introduce Smoothed Attack, which is $1.89\times$ more effective in decreasing the rewards of smoothed agents than existing adversarial attacks.
Breaking the Barrier: Enhanced Utility and Robustness in Smoothed DRL Agents
Innovative algorithms S-DQN and S-PPO enhance robustness and clean rewards in deep reinforcement learning, outperforming existing agents and introducing an effective Smoothed Attack.
- Year
- 2024
- Venue
- arXiv 2024
- Authors
- 3
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2406.18062ARXIV-DEFAULT
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