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arxiv: 1910.00528 · v1 · pith:35EFHURFnew · submitted 2019-10-01 · 💻 cs.LG · cs.AI· cs.RO· stat.ML

Augmenting learning using symmetry in a biologically-inspired domain

classification 💻 cs.LG cs.AIcs.ROstat.ML
keywords learningdomaininvariancessymmetryaugmentrotationtranslationused
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Invariances to translation, rotation and other spatial transformations are a hallmark of the laws of motion, and have widespread use in the natural sciences to reduce the dimensionality of systems of equations. In supervised learning, such as in image classification tasks, rotation, translation and scale invariances are used to augment training datasets. In this work, we use data augmentation in a similar way, exploiting symmetry in the quadruped domain of the DeepMind control suite (Tassa et al. 2018) to add to the trajectories experienced by the actor in the actor-critic algorithm of Abdolmaleki et al. (2018). In a data-limited regime, the agent using a set of experiences augmented through symmetry is able to learn faster. Our approach can be used to inject knowledge of invariances in the domain and task to augment learning in robots, and more generally, to speed up learning in realistic robotics applications.

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  1. Deep deterministic policy gradient with symmetric data augmentation for lateral attitude tracking control of a fixed-wing aircraft

    cs.LG 2024-07 unverdicted novelty 4.0

    Symmetric data augmentation plus dual-critic DDPG accelerates policy convergence for fixed-wing aircraft lateral attitude control under an MDP symmetry assumption.