Deep neural networks are the most commonly used function approximators in offline Reinforcement Learning these days. Prior works have shown that neural nets trained with TD-learning and gradient descent can exhibit implicit regularization that can be characterized by under-parameterization of these networks. Specifically, the rank of the penultimate feature layer, also called \textit{effective rank}, has been observed to drastically collapse during the training. In turn, this collapse has been argued to reduce the model's ability to further adapt in later stages of learning, leading to the diminished final performance. Such an association between the effective rank and performance makes effective rank compelling for offline RL, primarily for offline policy evaluation. In this work, we conduct a careful empirical study on the relation between effective rank and performance on three offline RL datasets : bsuite, Atari, and DeepMind lab. We observe that a direct association exists only in restricted settings and disappears in the more extensive hyperparameter sweeps. Also, we empirically identify three phases of learning that explain the impact of implicit regularization on the learning dynamics and found that bootstrapping alone is insufficient to explain the collapse of the effective rank. Further, we show that several other factors could confound the relationship between effective rank and performance and conclude that studying this association under simplistic assumptions could be highly misleading.
翻译:先前的工程显示,经过TD-学习和梯度下降培训的神经网可以显示隐性正规化,其特征可以是这些网络的分数不足。具体地说,在培训期间,观察到倒数第二特征层的等级也称为\ textit{effectial level},在培训期间急剧崩溃。反过来,这种崩溃是为了降低模型在后期学习阶段进一步适应的能力,导致最后性能下降。有效级别和性能之间的这种联系使得脱线RL的有效级别具有吸引力,主要是用于离线政策评价。在这项工作中,我们对三部RL离线数据集的有效级别和性能之间的关系进行了认真的经验性研究:bsutite、Atari和DeepMind实验室。我们发现,直接联系只在有限的环境中存在,在更广泛的超分数扫描中消失。此外,我们从经验上确定了三个阶段学习如何解释隐含的正规化对学习动态的影响,主要用于离线政策评价。我们发现,单靠靴式定型的状态不足以解释其他等级之间的有效关系。