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The Risk-Aware ARLBench Performance Dataset

This dataset is with the paper Efficient Heteroscedastic Bayesian Optimization for Risk-Aware AutoRL, in which we propose efficient risk-averse Bayesian optimization (BO) method ERAHBO for reinforcement learning (RL) hyperparameter optimization, to be published at Reinforcement Learning Conference (RLC) 2026.

The data set is an extension of ARLbench dataset, with a focus on reproducibility and reliability of reinforcement learning hyperparameters, in particular, it focuses on the variation of the policy return across random seeds.

Dataset details

The dataset includes:

  • Landscape data: 50 runs each for PPO, DQN, and SAC across:
    • Four XLand gridworlds
    • Two Brax walkers
    • Five classic control environments

with 256 configurations generated by a random search.

Dataset Mapping

The dataset follows this mapping: training steps, seed, hyperparameter configurationtraining performance\text{training steps, seed, hyperparameter configuration} \mapsto \text{training performance}

Paper and code

In preparation


license: cc-by-sa-4.0

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