EcoLANG: Efficient and Effective Agent Communication Language Induction for Social Simulation
About
Large language models (LLMs) have demonstrated an impressive ability to role-play humans and replicate complex social dynamics. While large-scale social simulations are gaining increasing attention, they still face significant challenges, particularly regarding high time and computation costs. Existing solutions, such as distributed mechanisms or hybrid agent-based model (ABM) integrations, either fail to address inference costs or compromise accuracy and generalizability. To this end, we propose EcoLANG: Efficient and Effective Agent Communication Language Induction for Social Simulation. EcoLANG operates in two stages: (1) language evolution, where we filter synonymous words and optimize sentence-level rules through natural selection, and (2) language utilization, where agents in social simulations communicate using the evolved language. Experimental results demonstrate that EcoLANG reduces token consumption by over 20%, enhancing efficiency without sacrificing simulation accuracy.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multi-agent Question Answering | ARC-Challenge (first 300 questions) | Average Accuracy34.89 | 10 | |
| Multi-agent Question Answering | ARC Easy (first 300 questions) | Average Accuracy37.33 | 10 | |
| Multi-agent Question Answering | CommonsenseQA (first 300 questions) | Average Accuracy48 | 10 | |
| Multi-agent Question Answering | WorldTree (first 300 questions) | Average Accuracy68.11 | 10 | |
| Multi-agent Question Answering | PubMedQA (first 300 questions) | Average Accuracy54.67 | 10 | |
| Multi-agent Question Answering | MedQA (first 300 questions) | Average Accuracy41.89 | 10 | |
| Multi-agent Question Answering | SocialIQA (first 300 questions) | Average Accuracy55.78 | 10 | |
| Multi-agent Question Answering | StrategyQA (first 300 questions) | Average Accuracy49.44 | 10 | |
| Human trust behavior simulation | Repeated Trust Game | Average Sent Amount4.05 | 7 |