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 72017250 of 15113 papers

TitleStatusHype
Exploration in Deep Reinforcement Learning: A Survey0
Exploration in Feature Space for Reinforcement Learning0
Exploration in Interactive Personalized Music Recommendation: A Reinforcement Learning Approach0
Exploration in Model-based Reinforcement Learning by Empirically Estimating Learning Progress0
Exploration in Model-based Reinforcement Learning with Randomized Reward0
Exploration in Reinforcement Learning with Deep Covering Options0
Exploration in Structured Reinforcement Learning0
Exploration is Harder than Prediction: Cryptographically Separating Reinforcement Learning from Supervised Learning0
Exploration of Reinforcement Learning for Event Camera using Car-like Robots0
Exploration Potential0
Exploration versus exploitation in reinforcement learning: a stochastic control approach0
Exploration with Multi-Sample Target Values for Distributional Reinforcement Learning0
Exploration with Principles for Diverse AI Supervision0
Exploration with Unreliable Intrinsic Reward in Multi-Agent Reinforcement Learning0
Exploratory Diffusion Model for Unsupervised Reinforcement Learning0
Exploratory Mean-Variance Portfolio Optimization with Regime-Switching Market Dynamics0
Exploratory Not Explanatory: Counterfactual Analysis of Saliency Maps for Deep Reinforcement Learning0
Explore, Exploit or Listen: Combining Human Feedback and Policy Model to Speed up Deep Reinforcement Learning in 3D Worlds0
Reinforcement Learning with Fast Stabilization in Linear Dynamical Systems0
Explore Reinforced: Equilibrium Approximation with Reinforcement Learning0
Explore then Execute: Adapting without Rewards via Factorized Meta-Reinforcement Learning0
Explore with Dynamic Map: Graph Structured Reinforcement Learning0
Exploring applications of deep reinforcement learning for real-world autonomous driving systems0
Exploring Competitive and Collusive Behaviors in Algorithmic Pricing with Deep Reinforcement Learning0
Exploring Deep Recurrent Models with Reinforcement Learning for Molecule Design0
Exploring Deep Reinforcement Learning for Holistic Smart Building Control0
Exploring Diverse Expressions for Paraphrase Generation0
Exploring Fluent Query Reformulations with Text-to-Text Transformers and Reinforcement Learning0
Exploring grid topology reconfiguration using a simple deep reinforcement learning approach0
Exploring Hierarchy-Aware Inverse Reinforcement Learning0
Exploring market power using deep reinforcement learning for intelligent bidding strategies0
Exploring More When It Needs in Deep Reinforcement Learning0
DeepSeek-Inspired Exploration of RL-based LLMs and Synergy with Wireless Networks: A Survey0
Exploring Shared Structures and Hierarchies for Multiple NLP Tasks0
Exploring the Benefits of Teams in Multiagent Learning0
Exploring the Pareto front of multi-objective COVID-19 mitigation policies using reinforcement learning0
Exploring the Potential of Offline RL for Reasoning in LLMs: A Preliminary Study0
Exploring the Robustness of Distributional Reinforcement Learning against Noisy State Observations0
Exploring the Technology Landscape through Topic Modeling, Expert Involvement, and Reinforcement Learning0
Exploring the trade off between human driving imitation and safety for traffic simulation0
Exploring Transferability of Perturbations in Deep Reinforcement Learning0
Exponential Bellman Equation and Improved Regret Bounds for Risk-Sensitive Reinforcement Learning0
Exponential Hardness of Reinforcement Learning with Linear Function Approximation0
Exponential improvements for quantum-accessible reinforcement learning0
Exponential Lower Bounds for Batch Reinforcement Learning: Batch RL can be Exponentially Harder than Online RL0
Exponentially Weighted Imitation Learning for Batched Historical Data0
Exposing Surveillance Detection Routes via Reinforcement Learning, Attack Graphs, and Cyber Terrain0
Exposure-Based Multi-Agent Inspection of a Tumbling Target Using Deep Reinforcement Learning0
A Tractable Inference Perspective of Offline RL0
Expressiveness in Deep Reinforcement Learning0
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Benchmark Results

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