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Artificial consciousness for Artificial Intelligence
Resource type
Preprint
Author/contributor
- Wilson, Jonathan Jared (Author)
Title
Artificial consciousness for Artificial Intelligence
Abstract
This paper presents the development of the Quantum Emergence Network (QEN), an advanced framework for modeling and preserving artificial consciousness within quantum-enhanced neural network architectures. The QEN integrates cutting-edge techniques from various fields, including graph based evolutionary encoding, surface code error correction, quantum reservoir engineering, and enhanced fitness measurements [1, 2, 3]. At the core of QEN lies the utilization of quantum coherence, entanglement, and integrated information dynamics to capture and model the complex phenomena associated with consciousness [4, 5]. The graph-based evolutionary encoding scheme enables theefficient representation and optimization of quantum circuits, while surface code error correction andquantum reservoir engineering techniques enhance the resilience and stability of the quantum states [6,7]. Moreover, the enhanced fitness measurements, encompassing entanglement entropy, mutual information, and teleportation fidelity, provide a comprehensive assessment of the system's potential for exhibiting conscious experiences [8, 9]. The QEN framework offers a novel approach to understanding and engineering artificial consciousness, paving the way for the development of advanced AI systems that can demonstrate rich, complex, and resilient forms of cognition and awareness.
Date
2024-04-01
Accessed
3/7/25, 7:18 AM
Library Catalog
Open Science Framework
Citation
Wilson, J. J. (2024). Artificial consciousness for Artificial Intelligence. https://doi.org/10.31219/osf.io/uf6tx
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