Mutual Influence AI: Trust-Based Cooperation Mechanisms for LLM Multi-Agent Systems
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Vysoká škola báňská - Technická univerzita Ostrava
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Abstract
This paper introduces Mutual Influence AI,
a novel concept for adaptive cooperation in multi-agent
systems. Unlike classical independent reasoning or cen-
tralized orchestration, our approach introduces an ex-
plicit mutual influence factor μ that captures trust-
adjusted peer feedback and directly modulates large lan-
guage model (LLM) generation. We present (i) a math-
ematical formalization of mutual influence, (ii) a pro-
totype implementation integrated with Microsoft Auto-
Gen for LLM-based agents, and (iii) qualitative evi-
dence that the framework improves adaptability, trans-
parency, and coordination in multi-agent dialogues.
Results show that Mutual Influence AI stabilizes group
interactions efficiently while providing interpretable
control over how agents influence each other. This
positions Mutual Influence AI as a new paradigm for
LLM-driven multi-agent systems with potential appli-
cations ranging from collaborative problem solving to
cybersecurity. Quantitatively, across 167 simulation
runs, cross–role agreement increased from 0.19 (base-
line) to 0.50 under influence (approx. +160%), with
median revision depth (approx. 1.0). Under adversarial
feedback, agreement still improved (0.18 to 0.47).
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Subject(s)
mutual influence, multi-agent systems, large language models, AutoGen
Citation
Advances in electrical and electronic engineering. 2025, vol. 23, no. 4, pp. 354 – 365 : ill.