PSPL maintains posteriors over reward models and dynamics to deliver the first Bayesian simple regret guarantees for PbRL and outperforms baselines on simulation and image generation tasks.
Mohammad Ghavamzadeh, Shie Mannor, Joelle Pineau, Aviv Tamar, et al
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Best Policy Learning from Trajectory Preference Feedback
PSPL maintains posteriors over reward models and dynamics to deliver the first Bayesian simple regret guarantees for PbRL and outperforms baselines on simulation and image generation tasks.