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Neuro-inspired quantum associative memory using adiabatic hamiltonian evolution

机译:绝热哈密尔顿进化的神经启发性量子缔合记忆

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It is widely believed that the real parallel computation achieved by quantum computers has an enormous computing potential. In order to expand its applicable field, we have investigated the fusion of quantum and neural computations. As a first step of implementing learning function on quantum computers, we have proposed a novel quantum associative memory (QuAM) by considering an analogy between neural associative network and qubit network. The memorizing procedure of the QuAM is realized with a Hamiltonian derived from qubit-qubit interactions, and the retrieving procedure is based on the adiabatic Hamiltonian evolution. The memory capacity of the QuAM has been nominally estimated as 2 where N is a number of qubits, but its retrieve property has not been discussed in our previous study. This paper proposes a retrieving process for the QuAM and evaluates its performance in detail. The results indicate that the average of the retrieving probability is over 50% even when the qubit network memorizes 2 patterns and thus the QuAM is successfully implemented.
机译:众所周知,量子计算机实现的真实并行计算具有巨大的计算潜力。为了扩大其适用的领域,我们研究了量子和神经计算的融合。作为在量子计算机上实现学习功能的第一步,我们通过考虑了神经关联网络和QUBBit网络之间的类比,提出了一种新的量子关联存储器(QUAM)。用Qubit-Qubit相互作用的汉密尔顿人来实现Quam的记忆过程,检索程序基于绝热汉密尔顿进化。众所周知,众所周知的内存容量已被标称估计为2,其中n是许多Qubits,但在我们以前的研究中尚未讨论其检索属性。本文提出了检索QUAM的过程,并详细评估其性能。结果表明,即使当量子网记忆成2个模式并成功实现众规则,检索概率的平均值也超过50 \%。

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