ITCMA: A Generative Agent Based on a Computational Consciousness Structure

Resource type
Preprint
Authors/contributors
Title
ITCMA: A Generative Agent Based on a Computational Consciousness Structure
Abstract
Large Language Models (LLMs) still face challenges in tasks requiring understanding implicit instructions and applying common-sense knowledge. In such scenarios, LLMs may require multiple attempts to achieve human-level performance, potentially leading to inaccurate responses or inferences in practical environments, affecting their long-term consistency and behavior. This paper introduces the Internal Time-Consciousness Machine (ITCM), a computational consciousness structure to simulate the process of human consciousness. We further propose the ITCM-based Agent (ITCMA), which supports action generation and reasoning in open-world settings, and can independently complete tasks. ITCMA enhances LLMs' ability to understand implicit instructions and apply common-sense knowledge by considering agents' interaction and reasoning with the environment. Evaluations in the Alfworld environment show that trained ITCMA outperforms the state-of-the-art (SOTA) by 9% on the seen set. Even untrained ITCMA achieves a 96% task completion rate on the seen set, 5% higher than SOTA, indicating its superiority over traditional intelligent agents in utility and generalization. In real-world tasks with quadruped robots, the untrained ITCMA achieves an 85% task completion rate, which is close to its performance in the unseen set, demonstrating its comparable utility and universality in real-world settings.
Repository
arXiv
Date
2024
Accessed
3/7/25, 9:29 AM
Short Title
ITCMA
Library Catalog
DOI.org (Datacite)
Rights
Creative Commons Attribution Non Commercial No Derivatives 4.0 International
Extra
Version Number: 2
Notes

Other

20 pages, 11 figures
Citation
Zhang, H., Yin, J., Wang, H., & Xiang, Z. (2024). ITCMA: A Generative Agent Based on a Computational Consciousness Structure. arXiv. https://doi.org/10.48550/ARXIV.2403.20097