前馈神经网络的量子算法

J. Allcock, Chang-Yu Hsieh, Iordanis Kerenidis, Shengyu Zhang
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引用次数: 49

摘要

量子机器学习具有广泛的工业应用潜力,鉴于量子算法在今天的机器学习中发挥的核心作用,用于提高神经网络性能的量子算法的发展尤其令人感兴趣。在经典前馈和反向传播算法的基础上,提出了用于训练和评估前馈神经网络的量子算法。我们的算法依赖于一个高效的量子子程序,以鲁棒的方式逼近向量之间的内积,并隐式地将中间值存储在量子随机存取存储器中,以便在后期快速检索。我们的算法在网络规模上的运行时间可以比标准的经典算法快2倍,因为它们线性依赖于网络中的神经元数量,而不是神经元之间的连接数量。此外,通过我们的量子算法训练的网络可能具有固有的过拟合弹性,因为该算法自然地模仿用于正则化网络的经典技术的效果。我们的算法也可以作为新的量子启发的经典算法的基础,这些算法与量子算法一样依赖于网络维度,但在其他参数上具有二次开销,这使得它们相对不切实际。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantum Algorithms for Feedforward Neural Networks
Quantum machine learning has the potential for broad industrial applications, and the development of quantum algorithms for improving the performance of neural networks is of particular interest given the central role they play in machine learning today. We present quantum algorithms for training and evaluating feedforward neural networks based on the canonical classical feedforward and backpropagation algorithms. Our algorithms rely on an efficient quantum subroutine for approximating inner products between vectors in a robust way, and on implicitly storing intermediate values in quantum random access memory for fast retrieval at later stages. The running times of our algorithms can be quadratically faster in the size of the network than their standard classical counterparts since they depend linearly on the number of neurons in the network, and not on the number of connections between neurons. Furthermore, networks trained by our quantum algorithm may have an intrinsic resilience to overfitting, as the algorithm naturally mimics the effects of classical techniques used to regularize networks. Our algorithms can also be used as the basis for new quantum-inspired classical algorithms with the same dependence on the network dimensions as their quantum counterparts but with quadratic overhead in other parameters that makes them relatively impractical.
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