- Quantum neural network
Quantum neural networks (QNN) refers to the class of
neural network models, artificial or biological, which rely on principles inspired in some way fromquantum mechanics .Two different classes may be generally distinguished:
#The class of quantum neural networks which explicitly use concepts from
quantum computing , such assuperposition ,interference ,entanglement orqubits and qubit registers. Several authors have published papers on this type of QNN, however most have remained at the purely theoretical level, especially since most proposals require a functional quantum computer to be implemented. Some proposed models are networks where the neuron is modeled like a qubit, and quantum associative memory (a quantum equivalent of a hopfield network).
#Models of biological neural networks (e.g animal and human brains) which use concepts from quantum computing and quantum mechanics to explain the exceptional performance of biological brains as opposed to conventional computing devices, or to explain why humans (and eventually other animals) exhibit consciousness, while current computers do not. See ideas about thequantum mind .External links
* [http://www.cic.unb.br/~weigang/qc/aci.html Review of quantum neural networks by Wei]
* [http://arxiv.org/abs/quant-ph/0401127 Article by P. Gralewicz on the plausibility of quantum computing in biological neural networks]
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