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Learning Dynamics and Generalization in Reinforcement Learning

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arxiv 2206.02126 v1 pith:PO6MAVBR submitted 2022-06-05 cs.LG

Learning Dynamics and Generalization in Reinforcement Learning

classification cs.LG
keywords learninggeneralizationdifferencenetworkstemporaltrainedagentsalgorithms
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Solving a reinforcement learning (RL) problem poses two competing challenges: fitting a potentially discontinuous value function, and generalizing well to new observations. In this paper, we analyze the learning dynamics of temporal difference algorithms to gain novel insight into the tension between these two objectives. We show theoretically that temporal difference learning encourages agents to fit non-smooth components of the value function early in training, and at the same time induces the second-order effect of discouraging generalization. We corroborate these findings in deep RL agents trained on a range of environments, finding that neural networks trained using temporal difference algorithms on dense reward tasks exhibit weaker generalization between states than randomly initialized networks and networks trained with policy gradient methods. Finally, we investigate how post-training policy distillation may avoid this pitfall, and show that this approach improves generalization to novel environments in the ProcGen suite and improves robustness to input perturbations.

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Cited by 3 Pith papers

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  2. From Ticks to Flows: Dynamics of Neural Reinforcement Learning in Continuous Environments

    cs.LG 2026-06 unverdicted novelty 7.0

    Derives an SDE describing the infinitesimal change in state distribution at each gradient step for neural actor-critic RL in continuous environments under vanishing learning rate in the infinite width limit.

  3. Double Preconditioning (DoPr): Optimization for Test-Time Performance, not Validation Loss

    cs.LG 2026-06 unverdicted novelty 6.0

    Double preconditioning (DoPr) improves downstream task performance in test-time feedback settings without consistent gains in validation loss.