Approximates encountered state distribution via VAE and constructs dual bound barrier certificates to provide probably approximately safe guarantees in RL by optimizing the non-robust region.
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Scenario Generation for Risk-Aware Reinforcement Learning with Probably Approximately Safe Guarantees
Approximates encountered state distribution via VAE and constructs dual bound barrier certificates to provide probably approximately safe guarantees in RL by optimizing the non-robust region.