Swap Softmax Twin Delayed Deep Deterministic Policy Gradient

Chaohu Liu, Yunbo Zhao
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Abstract

Reinforcement learning algorithms have attained noteworthy accomplishments in the field of continuous control. One of the classic algorithms in continuous control, the DDPG algorithm, is widely used and has been shown to be susceptible to overestimation. Following this, the TD3 algorithm was introduced, which integrated the notion of double DQN. TD3 takes into account the minimum value between a pair of critics to restrict overestimation. Nevertheless, TD3 may lead to an underestimation bias. To mitigate the impact of errors, we present a novel approach by integrating Swap Softmax with TD3, which can counterbalance the extreme values. We assess the efficacy of our proposed technique on continuous control tasks that are simulated by MuJoCo and provided by OpenAI Gym. Our experimental findings demonstrate a significant enhancement in the performance and robustness.
交换Softmax双延迟深度确定性策略梯度
强化学习算法在连续控制领域取得了显著的成就。连续控制中的经典算法之一DDPG算法被广泛使用,但已被证明容易被高估。接着介绍了TD3算法,该算法集成了双DQN的概念。TD3考虑了两个批评家之间的最小值,以限制高估。然而,TD3可能导致低估偏差。为了减轻错误的影响,我们提出了一种新的方法,通过将Swap Softmax与TD3集成,可以抵消极值。我们评估了我们提出的技术在由MuJoCo模拟并由OpenAI Gym提供的连续控制任务中的有效性。我们的实验结果表明,我们的性能和鲁棒性有了显着提高。
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