Quantum circuit design using neural networks assisted by entanglement

Carolina Allende, Efrain Buksman, A. F. De Oliveira
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Abstract

This work introduces a novel structure based on universal quantum circuits which uses classical machine learning techniques in order to solve a quantum problem: the decomposition of a generic quantum operator into a sequence of elementary unitary matrices (universal basic quantum gates). Even though the postulates of quantum mechanics guarantee any unitary operation as a feasible operation over a quantum system, there is no simple method to implement an arbitrary algorithm. By means of a multilayer hybrid neural network in which the basic cell is made up of CNOTs and universal one-qubit unitary gates, this work offers a solution to the given problem. These specific gates were chosen since they are the gates available in real quantum computers such as IBMQ's quantum processors. The network learns the unitary gates classically using the method of the steepest descent and is aided in learning the entangling gates by the use of two types of quantum correlations: Mutual Information (MI) and Cumulative Correlation Measure (CCM). The algorithm implemented in this case is a type of supervised learning. The results show that the model fits the data gracefully and correctly predicts a wide range of algorithms.
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利用神经网络辅助的量子电路设计
这项工作介绍了一种基于通用量子电路的新结构,它使用经典的机器学习技术来解决量子问题:将一般量子算子分解为一系列初等酉矩阵(通用基本量子门)。尽管量子力学的假设保证了量子系统上的任何单一操作都是可行的,但没有简单的方法来实现任意算法。通过多层混合神经网络,其中的基本单元由cnos和通用的一量子位一元门组成,本工作提供了一个解决给定问题的方法。之所以选择这些特定的门,是因为它们是实际量子计算机(如IBMQ的量子处理器)中可用的门。该网络经典地使用最陡下降法学习酉门,并通过使用两种类型的量子相关:互信息(MI)和累积相关度量(CCM)来辅助学习纠缠门。在这种情况下实现的算法是一种监督学习。结果表明,该模型能很好地拟合数据,并能正确地预测各种算法。
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