Nonparametric Regression Quantum Neural Networks
Abstract
In two pervious papers \cite{dndiep3}, \cite{dndiep4}, the first author constructed the least square quantum neural networks (LS-QNN), and ploynomial interpolation quantum neural networks ( PI-QNN), parametrico-stattistical QNN like: leanr regrassion quantum neural networks (LR-QNN), polynomial regression quantum neural networks (PR-QNN), chi-squared quantum neural netowrks (-QNN). We observed that the method works also in the cases by using nonparametric statistics. In this paper we analyze and implement the nonparametric tests on QNN such as: linear nonparametric regression quantum neural networks (LNR-QNN), polynomial nonparametric regression quantum neural networks (PNR-QNN). The implementation is constructed through the Gauss-Jordan Elimination quantum neural networks (GJE-QNN).The training rule is to use the high probability confidence regions or intervals.
Cite
@article{arxiv.2002.02818,
title = {Nonparametric Regression Quantum Neural Networks},
author = {Do Ngoc Diep and Koji Nagata and Tadao Nakamura},
journal= {arXiv preprint arXiv:2002.02818},
year = {2020}
}
Comments
4 pages, no figure, LaTeX2e