PIPPS: Flexible Model-Based Policy Search Robust to the Curse of Chaos

February 04, 2019 ยท Declared Dead ยท ๐Ÿ› International Conference on Machine Learning

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Authors Paavo Parmas, Carl Edward Rasmussen, Jan Peters, Kenji Doya arXiv ID 1902.01240 Category cs.LG: Machine Learning Cross-listed cs.AI, cs.RO, stat.ML Citations 93 Venue International Conference on Machine Learning Last Checked 3 months ago
Abstract
Previously, the exploding gradient problem has been explained to be central in deep learning and model-based reinforcement learning, because it causes numerical issues and instability in optimization. Our experiments in model-based reinforcement learning imply that the problem is not just a numerical issue, but it may be caused by a fundamental chaos-like nature of long chains of nonlinear computations. Not only do the magnitudes of the gradients become large, the direction of the gradients becomes essentially random. We show that reparameterization gradients suffer from the problem, while likelihood ratio gradients are robust. Using our insights, we develop a model-based policy search framework, Probabilistic Inference for Particle-Based Policy Search (PIPPS), which is easily extensible, and allows for almost arbitrary models and policies, while simultaneously matching the performance of previous data-efficient learning algorithms. Finally, we invent the total propagation algorithm, which efficiently computes a union over all pathwise derivative depths during a single backwards pass, automatically giving greater weight to estimators with lower variance, sometimes improving over reparameterization gradients by $10^6$ times.
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