A Stochastic Quantum Neural Network Model for Ai
- URL: http://arxiv.org/abs/2511.11609v1
- Date: Mon, 03 Nov 2025 09:18:02 GMT
- Title: A Stochastic Quantum Neural Network Model for Ai
- Authors: Gautier-Edouard Filardo, Thibaut Heckmann,
- Abstract summary: We propose a mathematical formalization of quantum neural networks (QNNS), where qubits evolve according to differential equations inspired by biological neuronal processes.<n>We also discuss challenges related to decoherence, qubit stability, and implications for AI and computational neuroscience.
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- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Artificial intelligence (AI) has drawn significant inspiration from neuroscience to develop artificial neural network (ANN) models. However, these models remain constrained by the Von Neumann architecture and struggle to capture the complexity of the biological brain. Quantum computing, with its foundational principles of superposition, entanglement, and unitary evolution, offers a promising alternative approach to modeling neural dynamics. This paper explores the possibility of a neuro-quantum model of the brain by introducing a stochastic quantum approach that incorporates random fluctuations of neuronal processing within a quantum framework. We propose a mathematical formalization of stochastic quantum neural networks (QNNS), where qubits evolve according to stochastic differential equations inspired by biological neuronal processes. We also discuss challenges related to decoherence, qubit stability, and implications for AI and computational neuroscience.
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