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Structured Evolution with Compact Architectures for Scalable Policy Optimization

1 Pith paper cite this work. Polarity classification is still indexing.

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abstract

We present a new method of blackbox optimization via gradient approximation with the use of structured random orthogonal matrices, providing more accurate estimators than baselines and with provable theoretical guarantees. We show that this algorithm can be successfully applied to learn better quality compact policies than those using standard gradient estimation techniques. The compact policies we learn have several advantages over unstructured ones, including faster training algorithms and faster inference. These benefits are important when the policy is deployed on real hardware with limited resources. Further, compact policies provide more scalable architectures for derivative-free optimization (DFO) in high-dimensional spaces. We show that most robotics tasks from the OpenAI Gym can be solved using neural networks with less than 300 parameters, with almost linear time complexity of the inference phase, with up to 13x fewer parameters relative to the Evolution Strategies (ES) algorithm introduced by Salimans et al. (2017). We do not need heuristics such as fitness shaping to learn good quality policies, resulting in a simple and theoretically motivated training mechanism.

fields

cs.DC 1

years

2019 1

verdicts

UNVERDICTED 1

representative citing papers

Distributed Black-Box Optimization via Error Correcting Codes

cs.DC · 2019-07-13 · unverdicted · novelty 6.0

Presents a coded distributed black-box optimization framework resilient to stragglers via error-correcting codes on search directions, extending evolution strategies, with experiments showing faster runtimes on adversarial attacks.

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Showing 1 of 1 citing paper.

  • Distributed Black-Box Optimization via Error Correcting Codes cs.DC · 2019-07-13 · unverdicted · none · ref 5 · internal anchor

    Presents a coded distributed black-box optimization framework resilient to stragglers via error-correcting codes on search directions, extending evolution strategies, with experiments showing faster runtimes on adversarial attacks.