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Research Seminar by GENG Minghong

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Research Seminar by GENG Minghong
 
DATE :14 May 2025, Wednesday
TIME :10:00am to 11:00am
VENUE :Meeting room 5.1, Level 5
School of Computing and Information Systems 1,
Singapore Management University,
80 Stamford Road,
Singapore 178902

Please register by 12 May 2025

 

 *There are 2 talks in this session, each talk is approximately 30 minutes.*
All sessions are for pre-conference talk for 24th International Conference on Autonomous Agents and Multiagent Systems (AAMAS 2025)

 

About the Talk (s)

Talk #1: Hierarchical Frameworks for Scaling-up Multi-agent Coordination

Multi-agent reinforcement learning has emerged as a powerful framework for developing collaborative behaviors in autonomous systems. However, existing MARL methods often struggle with scalability in terms of both the number of agents and decision-making horizons. My research focuses on developing hierarchical approaches to scale up MARL systems through two complementary directions: structural scaling by increasing the number of coordinated agents and temporal scaling by extending planning horizons. My initial work introduced HiSOMA, a hierarchical framework integrating self-organizing neural networks with MARL for long-horizon planning, and MOSMAC, a benchmark for evaluating MARL methods on multi-objective MARL scenarios. Building on these foundations, my recent work studies L2M2, a novel framework that leverages large language models for high-level planning in hierarchical multi-agent systems. My ongoing research explores complex bimanual control tasks, specifically investigating multiagent approaches for coordinated dual-hand manipulation.

Talk #2: MOSMAC: A Multi-agent Reinforcement Learning Benchmark on Sequential Multi-objective Tasks

Recent advancements in multi-agent reinforcement learning (MARL) have demonstrated success on various cooperative multi-agent tasks. However, current benchmarks often fall short of representing realistic scenarios that demand agents to execute sequential tasks over long temporal horizons while balancing multiple objectives. To address this limitation, we introduce multi-objective SMAC (MOSMAC), a comprehensive MARL benchmark designed to evaluate MARL methods on tasks involving multiple objectives, sequential subtask assignments, and varying temporal horizons. MOSMAC requires agents to tackle a series of interconnected subtasks in StarCraft II while simultaneously optimizing for multiple objectives, including combat, safety, and navigation. Through rigorous evaluation of nine state-of-the-art MARL algorithms, we demonstrate that MOSMAC presents substantial challenges to existing methods, particularly in long-horizon scenarios. Our analysis establishes MOSMAC as an essential benchmark for bridging the gap between single-objective MARL and multi-objective MARL (MOMARL). The codes for MOSMAC are available at: https://github.com/smu-ncc/mosmac.

 
 

About the Speaker 

 

 GENG Minghong is a Ph.D. candidate at SCIS, supervised by Professor TAN Ah Hwee. Minghong's research focuses on multi-agent system and multi-agent reinforcement learning. Minghong is a member of the Neural and Cognitive Computing Group. Please visit his homepage https://gengminghong.github.io/ for more information.