Reinforcement Learning (RL) agents are often unable to generalise well to environment variations in the state space that were not observed during training. This issue is especially problematic for image-based RL, where a change in just one variable, such as the background colour, can change many pixels in the image, which can lead to drastic changes in the agent's latent representation of the image, causing the learned policy to fail. To learn more robust representations, we introduce TEmporal Disentanglement (TED), a self-supervised auxiliary task that leads to disentangled image representations exploiting the sequential nature of RL observations. We find empirically that RL algorithms utilising TED as an auxiliary task adapt more quickly to changes in environment variables with continued training compared to state-of-the-art representation learning methods. Since TED enforces a disentangled structure of the representation, we also find that policies trained with TED generalise better to unseen values of variables irrelevant to the task (e.g.\ background colour) as well as unseen values of variables that affect the optimal policy (e.g.\ goal positions).
翻译:强化学习( RL) 代理器通常无法对培训期间未观察到的状态空间的环境变化进行概括化。 这个问题对于基于图像的 RL 来说特别成问题, 仅仅一个变量的改变, 如背景颜色, 就能改变图像中的许多像素, 这可能导致代理器对图像的潜在表达方式发生急剧变化, 导致所学政策失败。 要学习更强有力的表达方式, 我们引入时尚分解( TED), 这是一种自我监督的辅助任务, 导致图像表达方式不相干, 利用 RL 观测的相继性质。 我们从经验中发现, RL 算法将TED 作为一种辅助任务, 能够更快速地适应环境变量的变化, 与最先进的演示方法相比, 继续培训, 从而导致图像代表结构的分解。 我们还发现, TED 所培训的政策对与任务无关的变量( 如 \ 背景颜色) 的不可知的数值进行了更好的培训, 以及影响最佳政策( 如\ 目标位置 ) 。