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Obtaining a linear combination of the principal components of a matrix on quantum computers

机译:在量子计算机上获得矩阵主要成分的线性组合

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Principal component analysis is a multivariate statistical method frequently used in science and engineering to reduce the dimension of a problem or extract the most significant features from a dataset. In this paper, using a similar notion to the quantum counting, we show how to apply the amplitude amplification together with the phase estimation algorithm to an operator in order to procure the eigenvectors of the operator associated to the eigenvalues defined in the range [a, b], where a and b are real and 0 <= a <= b <= 1. This makes possible to obtain a combination of the eigenvectors associated with the largest eigenvalues and so can be used to do principal component analysis on quantum computers.
机译:主成分分析是一种多元统计方法,在科学和工程中经常使用,以减小问题的范围或从数据集中提取最重要的特征。在本文中,我们使用与量子计数类似的概念,展示了如何将振幅放大与相位估计算法一起应用于算子,以获取与在[a, b],其中a和b为实数,0 <= a <= b <=1。这使得获得与最大特征值相关的特征向量组合成为可能,因此可用于在量子计算机上进行主成分分析。

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