人工智能促进会(AAAI)成立于1979年,前身为美国人工智能协会(American Association for Artificial Intelligence),是一个非营利性的科学协会,致力于促进对思想和智能行为及其在机器中的体现的潜在机制的科学理解。AAAI旨在促进人工智能的研究和负责任的使用。AAAI还旨在增加公众对人工智能的了解,改善人工智能从业者的教学和培训,并为研究计划者和资助方提供关于当前人工智能发展的重要性和潜力以及未来方向的指导。
[1]. Backprop-Free Reinforcement Learning with Active Neural Generative Coding.
[2]. Multi-Sacle Dynamic Coding Improved Spiking Actor Network for Reinforcement Learning.
[3]. CADRE: A Cascade Deep Reinforcement Learning Framework for Vision-Based Autonomous Urban Driving.
[4]. Achieving Zero Constraint Violation for Constrained Reinforcement Learning via Primal-Dual Approach.
[5]. OAM: An Option-Action Reinforcement Learning Framework for Universal Multi-Intersection Control.
[6]. EMVLight: A Decentralized Reinforcement Learning Framework for Efficient Passage of Emergency Vehicles.
[7]. DeepThermal: Combustion Optimization for Thermal Power Generating Units Using Offline Reinforcement Learning.
[8]. AlphaHoldem: High-Performance Artificial Intelligence for Heads-Up No-Limit Poker via End-to-End Reinforcement Learning.
[9]. Conservative and Adaptive Penalty for Model-Based Safe Reinforcement Learning.
[10]. Robust Adversarial Reinforcement Learning with Dissipation Inequation Constraint.
[11]. Enforcement Heuristics for Argumentation with Deep Reinforcement Learning.
[12]. Programmatic Modeling and Generation of Real-Time Strategic Soccer Environments for Reinforcement Learning.
[13]. Learning by Competition of Self-Interested Reinforcement Learning Agents.
[14]. Reinforcement Learning with Stochastic Reward Machines.
[15]. Reinforcement Learning Based Dynamic Model Combination for Time Series Forecasting.
[16]. Theoretical Guarantees of Fictitious Discount Algorithms for Episodic Reinforcement Learning and Global Convergence of Policy Gradient Methods.
[17]. Learning Action Translator for Meta Reinforcement Learning on Sparse-Reward Tasks.