2020
DOI: 10.48550/arxiv.2007.03742
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Meta-active Learning in Probabilistically-Safe Optimization

Abstract: Learning to control a safety-critical system with latent dynamics (e.g. for deep brain stimulation) requires taking calculated risks to gain information as efficiently as possible. To address this problem, we present a probabilistically-safe, meta-active learning approach to efficiently learn system dynamics and optimal configurations. We cast this problem as meta-learning an acquisition function, which is represented by a Long-Short Term Memory Network (LSTM) encoding sampling history. This acquisition functi… Show more

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References 17 publications
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