Quantum-like product states constructed from classical networks
- URL: http://arxiv.org/abs/2406.19221v3
- Date: Mon, 03 Feb 2025 18:38:58 GMT
- Title: Quantum-like product states constructed from classical networks
- Authors: Gregory D. Scholes, Graziano Amati,
- Abstract summary: We show how quantum-like gates can act on the classical networks to allow quantum-like operations in the state space.
We show how quantum-like gates can act on the classical networks to allow quantum-like operations in the state space.
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- Abstract: Can complex classical systems be designed to exhibit superpositions of tensor products of basis states, thereby mimicking quantum states? We exhibit a one-to one map between the product basis of quantum states comprising an arbitrary number of qubits and the eigenstates of a construction comprising classical oscillator networks. Specifically, we prove the existence of this map based on Cartesian products of graphs, where the graphs depict the layout of oscillator networks. We show how quantum-like gates can act on the classical networks to allow quantum-like operations in the state space.
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