Understanding the Evolution of Linear Regions in Deep Reinforcement Learning
October 24, 2022 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Setareh Cohan, Nam Hee Kim, David Rolnick, Michiel van de Panne
arXiv ID
2210.13611
Category
cs.LG: Machine Learning
Cross-listed
cs.AI
Citations
7
Venue
Neural Information Processing Systems
Last Checked
4 months ago
Abstract
Policies produced by deep reinforcement learning are typically characterised by their learning curves, but they remain poorly understood in many other respects. ReLU-based policies result in a partitioning of the input space into piecewise linear regions. We seek to understand how observed region counts and their densities evolve during deep reinforcement learning using empirical results that span a range of continuous control tasks and policy network dimensions. Intuitively, we may expect that during training, the region density increases in the areas that are frequently visited by the policy, thereby affording fine-grained control. We use recent theoretical and empirical results for the linear regions induced by neural networks in supervised learning settings for grounding and comparison of our results. Empirically, we find that the region density increases only moderately throughout training, as measured along fixed trajectories coming from the final policy. However, the trajectories themselves also increase in length during training, and thus the region densities decrease as seen from the perspective of the current trajectory. Our findings suggest that the complexity of deep reinforcement learning policies does not principally emerge from a significant growth in the complexity of functions observed on-and-around trajectories of the policy.
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