AI RESEARCH
Agents that Matter: Optimizing Multi-Agent LLMs via Removal-Based Attribution
arXiv CS.CL
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ArXi:2605.27621v1 Announce Type: cross As multi-agent systems (MAS) become increasingly complex, identifying the contributions of individual agents is critical for system optimization. However, existing approaches lack a rigorous, unified framework for credit assignment. In this work, we formalize agent attribution as a cooperative game, parameterized by the coalition distribution, removal protocol, and target metric. Using this framework, we show that Leave-One-Out (LOO) identifies bottleneck agents as effectively as combinatorial methods, but at a fraction of the computational cost.