| dc.contributor.advisor |
Han, Seungyul |
- |
| dc.contributor.author |
Bae, Sang Jun |
- |
| dc.date.accessioned |
2026-03-26T22:15:25Z |
- |
| dc.date.available |
2026-03-26T22:15:25Z |
- |
| dc.date.issued |
2026-02 |
- |
| dc.description.abstract |
Communication can be essential in cooperative multi-agent reinforcement learning (MARL), where agents may need to overcome partial observability by exchanging information to accomplish tasks. How- ever, prior methods often rely on messages that are uninterpretable or contain irrelevant information. To overcome this issue, we propose LLM-driven Multi-Agent Communication (LMAC), a novel MARL framework that combines LLM-based communication protocol design with a meta-cognitive latent rep- resentation module. LMAC employs iterative refinement with phase-specific feedback to produce in- terpretable protocols that enhance state recovery and shared understanding, while its latent module in- corporates reliability signals with cycle consistency to ensure compact and trustworthy representations. Experiments across diverse MARL benchmarks demonstrate that LMAC consistently improves perfor- mance over other communication baselines. |
- |
| dc.description.degree |
Master |
- |
| dc.description |
Graduate School of Artificial Intelligence Artificial Intelligence |
- |
| dc.identifier.uri |
https://scholarworks.unist.ac.kr/handle/201301/91058 |
- |
| dc.identifier.uri |
http://unist.dcollection.net/common/orgView/200000964795 |
- |
| dc.language |
ENG |
- |
| dc.publisher |
Ulsan National Institute of Science and Technology |
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| dc.subject |
Battery |
- |
| dc.title |
LLM-Guided Communication for Cooperative Multi-Agent Reinforcement Learning |
- |
| dc.type |
Thesis |
- |