Search Results for author: Cong Guan

Found 7 papers, 3 papers with code

Stable Continual Reinforcement Learning via Diffusion-based Trajectory Replay

no code implementations16 Nov 2024 Feng Chen, Fuguang Han, Cong Guan, Lei Yuan, Zhilong Zhang, Yang Yu, Zongzhang Zhang

Given the inherent non-stationarity prevalent in real-world applications, continual Reinforcement Learning (RL) aims to equip the agent with the capability to address a series of sequentially presented decision-making tasks.

reinforcement-learning Reinforcement Learning +1

Quality-Diversity with Limited Resources

1 code implementation6 Jun 2024 Ren-Jian Wang, Ke Xue, Cong Guan, Chao Qian

Quality-Diversity (QD) algorithms have emerged as a powerful optimization paradigm with the aim of generating a set of high-quality and diverse solutions.

Diversity

Efficient Human-AI Coordination via Preparatory Language-based Convention

no code implementations1 Nov 2023 Cong Guan, Lichao Zhang, Chunpeng Fan, Yichen Li, Feng Chen, Lihe Li, Yunjia Tian, Lei Yuan, Yang Yu

Developing intelligent agents capable of seamless coordination with humans is a critical step towards achieving artificial general intelligence.

Language Modelling Large Language Model

Robust multi-agent coordination via evolutionary generation of auxiliary adversarial attackers

1 code implementation10 May 2023 Lei Yuan, Zi-Qian Zhang, Ke Xue, Hao Yin, Feng Chen, Cong Guan, Li-He Li, Chao Qian, Yang Yu

Concretely, to avoid the ego-system overfitting to a specific attacker, we maintain a set of attackers, which is optimized to guarantee the attackers high attacking quality and behavior diversity.

Diversity SMAC+

Multi-agent Continual Coordination via Progressive Task Contextualization

no code implementations7 May 2023 Lei Yuan, Lihe Li, Ziqian Zhang, Fuxiang Zhang, Cong Guan, Yang Yu

Towards tackling the mentioned issue, this paper proposes an approach Multi-Agent Continual Coordination via Progressive Task Contextualization, dubbed MACPro.

Continual Learning Multi-agent Reinforcement Learning

Heterogeneous Multi-agent Zero-Shot Coordination by Coevolution

1 code implementation9 Aug 2022 Ke Xue, Yutong Wang, Cong Guan, Lei Yuan, Haobo Fu, Qiang Fu, Chao Qian, Yang Yu

Generating agents that can achieve zero-shot coordination (ZSC) with unseen partners is a new challenge in cooperative multi-agent reinforcement learning (MARL).

Multi-agent Reinforcement Learning

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