OracleTSC: Oracle-Informed Reward Hurdle and Uncertainty Regularization for Traffic Signal Control · DeepSignal
OracleTSC: Oracle-Informed Reward Hurdle and Uncertainty Regularization for Traffic Signal Control arXiv cs.AI · Darryl Jacob, Xinyu Liu, Muchao Ye, Xiaoyong Yuan, Pan He 4d ago · ~2 min· 5/13/2026· en· 1OracleTSC enhances traffic signal control stability and efficiency using reward hurdles and uncertainty regularization.
Key Points Introduces reward hurdle to filter weak learning signals. Utilizes uncertainty regularization for consistent decision-making. Achieves significant improvements in traffic efficiency and interpretability. Reader Mode is being prepared.
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Why Featured
OracleTSC offers developers and PMs a new method to optimize traffic systems, while investors can see potential in AI-driven urban infrastructure solutions.