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 to the largest eigenvalues and so can be used to do
principal component analysis on quantum computers.Comment: The title of the paper is changed. A couple of sections are extended.
8 pages and 3 figure