SOTAVerified

Reinforcement Learning (RL)

Reinforcement Learning (RL) involves training an agent to take actions in an environment to maximize a cumulative reward signal. The agent interacts with the environment and learns by receiving feedback in the form of rewards or punishments for its actions. The goal of reinforcement learning is to find the optimal policy or decision-making strategy that maximizes the long-term reward.

Papers

Showing 281290 of 15113 papers

TitleStatusHype
DynamicRAG: Leveraging Outputs of Large Language Model as Feedback for Dynamic Reranking in Retrieval-Augmented GenerationCode2
Efficient Online Reinforcement Learning with Offline DataCode2
Fiber: A Platform for Efficient Development and Distributed Training for Reinforcement Learning and Population-Based MethodsCode2
Direct Multi-Turn Preference Optimization for Language AgentsCode2
Diffusion Policies as an Expressive Policy Class for Offline Reinforcement LearningCode2
Digi-Q: Learning Q-Value Functions for Training Device-Control AgentsCode2
Diffusion Actor-Critic with Entropy RegulatorCode2
DouZero: Mastering DouDizhu with Self-Play Deep Reinforcement LearningCode2
Accelerated Methods for Deep Reinforcement LearningCode2
Diffusion-based Reinforcement Learning via Q-weighted Variational Policy OptimizationCode2
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1PPGMean Normalized Performance0.76Unverified
2PPOMean Normalized Performance0.58Unverified