Guided Collaboration in Heterogeneous LLM-Based Multi-Agent Systems via Entropy-Based Understanding Assessment and Experience Retrieval
arXiv:2602.13639v1 Announce Type: new Abstract: With recent breakthroughs in large language models (LLMs) for reasoning, planning, and complex task generation, artificial intelligence systems are transitioning from isolated single-agent architectures to multi-agent systems with collaborative intelligence. However, in heterogeneous multi-agent systems (HMAS), capability differences among agents give rise to consistent cognitive problems, where strong and weak models fail to contribute effectively. We define the collaboration as a strong-weak system. Through comprehensive experiments, we disclose a counterintuitive phenomenon in the strong-weak system: a strong-weak collaboration may under-perform weak-weak combinations, revealing that cognitive mismatching are key bottlenecks limiting heterogeneous cooperation. To overcome these challenges, we propose an Entropy-Based Adaptive Guidance Framework that dynamically aligns the guidance with the cognitive state of each agent. The framework
arXiv:2602.13639v1 Announce Type: new Abstract: With recent breakthroughs in large language models (LLMs) for reasoning, planning, and complex task generation, artificial intelligence systems are transitioning from isolated single-agent architectures to multi-agent systems with collaborative intelligence. However, in heterogeneous multi-agent systems (HMAS), capability differences among agents give rise to consistent cognitive problems, where strong and weak models fail to contribute effectively. We define the collaboration as a strong-weak system. Through comprehensive experiments, we disclose a counterintuitive phenomenon in the strong-weak system: a strong-weak collaboration may under-perform weak-weak combinations, revealing that cognitive mismatching are key bottlenecks limiting heterogeneous cooperation. To overcome these challenges, we propose an Entropy-Based Adaptive Guidance Framework that dynamically aligns the guidance with the cognitive state of each agent. The framework quantifies the understanding of weak agents through multi-dimensional entropy metrics - covering expression, uncertainty, structure, coherence, and relevance - and adaptively adjusts the intensity of the guidance at light, moderate and intensive levels. Furthermore, a Retrieval-Augmented Generation (RAG) mechanism is incorporated to retain successful collaboration experiences, enabling both immediate adaptation and long-term learning. Extensive experiments on three benchmark datasets, GSM8K, MBPP, and CVRP demonstrate that our approach consistently enhances the effectiveness and stability of heterogeneous collaboration. The results highlight that adaptive guidance not only mitigates cognitive imbalance but also establishes a scalable pathway toward more robust, cooperative multi-agent intelligence.
Executive Summary
This article proposes an Entropy-Based Adaptive Guidance Framework to enhance collaboration in heterogeneous large language model-based multi-agent systems. The framework assesses the understanding of weak agents through multi-dimensional entropy metrics and adaptively adjusts guidance intensity. A Retrieval-Augmented Generation mechanism is also incorporated to retain successful collaboration experiences, leading to improved effectiveness and stability in heterogeneous collaboration. Extensive experiments demonstrate the approach's consistency and scalability towards robust, cooperative multi-agent intelligence.
Key Points
- ▸ Introduction of an Entropy-Based Adaptive Guidance Framework for heterogeneous multi-agent systems
- ▸ Use of multi-dimensional entropy metrics to quantify weak agents' understanding
- ▸ Incorporation of a Retrieval-Augmented Generation mechanism for experience retention and adaptation
Merits
Effective Collaboration
The proposed framework enhances the effectiveness and stability of heterogeneous collaboration, mitigating cognitive imbalance among agents.
Scalability
The approach establishes a scalable pathway toward more robust, cooperative multi-agent intelligence.
Demerits
Complexity
The framework's reliance on multi-dimensional entropy metrics and adaptive guidance may introduce complexity, potentially affecting real-time decision-making.
Expert Commentary
The proposed Entropy-Based Adaptive Guidance Framework offers a promising approach to addressing cognitive mismatching in heterogeneous multi-agent systems. By quantifying weak agents' understanding through multi-dimensional entropy metrics and adaptively adjusting guidance, the framework demonstrates potential for enhancing collaboration effectiveness and stability. However, further research is necessary to fully explore the framework's scalability and applicability in diverse real-world scenarios, as well as its potential impact on policy and regulatory frameworks governing autonomous systems.
Recommendations
- ✓ Future studies should investigate the framework's performance in more complex, dynamic environments, and explore its potential applications in various domains.
- ✓ Researchers should also examine the framework's robustness to adversarial attacks and its ability to generalize across different types of agents and tasks.