TL;DR
This paper investigates how entropy dynamics influence multi-agent system effectiveness, revealing that a single agent can outperform MAS in many cases and introducing an entropy-based solution selection method.
Contribution
It provides new insights into entropy's role in MAS performance and proposes the Entropy Judger algorithm for improved solution selection.
Findings
Single agent outperforms MAS in 43.3% of cases.
Entropy dynamics are largely determined in the first interaction round.
Entropy-based solution selection improves accuracy across tasks.
Abstract
Multi-agent systems (MAS) have emerged as a prominent paradigm for leveraging large language models (LLMs) to tackle complex tasks. However, the mechanisms governing the effectiveness of MAS built upon publicly available LLMs, specifically the underlying rationales for their success or failure, remain largely unexplored. In this paper, we revisit MAS through the perspective of \textit{entropy}, considering both intra- and inter-agent dynamics by investigating entropy transitions during problem-solving across various topologies, six reasoning benchmarks, and two agentic tasks. By analyzing 245 features spanning token-, agent-, and round-level entropy, we counterintuitively find that a single agent outperforms MAS in approximately 43.3\% of cases, and that entropy dynamics are largely determined during the first round of interaction. Furthermore, we provide three key observations: 1)…
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