International Journal of Computer Techniques Volume 12 Issue 4 | Reflective-MCTS: A Self-Improving Tree Search Algorithm for Advanced Autonomy in AI Agents

Reflective-MCTS: Self-Improving Tree Search for AI Autonomy | IJCT Journal

Reflective-MCTS: A Self-Improving Tree Search Algorithm for Advanced Autonomy in AI Agents

Author: Dr. Vinay Goyal, Assistant Professor, Computer Science, DAV College (Lahore), Ambala City, Haryana, India

Email: vinaykuk@gmail.com

Journal: International Journal of Computer Techniques (IJCT)

Volume: 12 | Issue: 4 | Publication Date: July – August 2025

ISSN: 2394-2231 | Journal URL: https://ijctjournal.org/

Abstract

Reflective-MCTS introduces a novel framework for autonomous AI agents by integrating Monte Carlo Tree Search with internal reflection, multi-agent debate, and continual self-supervised learning. The algorithm adapts during deployment, improving decision-making in dynamic environments. Empirical results show enhanced efficiency, accuracy, and interpretability, positioning Reflective-MCTS as a foundation for robust, trustworthy AI systems.

Keywords

Reflective-MCTS, Monte Carlo Tree Search, AI Autonomy, Test-Time Adaptation, Self-Supervised Learning, Multi-Agent Systems, Agent Reflection, Continual Learning, Interpretable AI

Conclusion

Reflective-MCTS marks a significant advancement in autonomous AI, combining planning with self-awareness and collaborative reasoning. It offers a scalable path toward interpretable, adaptive agents capable of real-time learning and robust decision-making. Future directions include human feedback integration and deployment on low-resource devices.

References

Includes foundational works from Nature, IEEE, AAAI, arXiv, and DeepAI on MCTS, agent reflection, continual learning, and self-supervised adaptation.

1 comment

comments user
📈 🔐 Security Pending – 1.4 Bitcoin transaction held. Proceed here >> https://graph.org/UNLOCK-CRYPTO-ASSETS-07-23?hs=77a07fee35517bc3ada6516bab72bf55& 📈

5554lr

Post Comment