Statistical Tests and Confidential Intervals as Thresholds for Quantum Neural Networks

01/30/2020
by   Do Ngoc Diep, et al.
0

Some basic quantum neural networks were analyzed and constructed in the recent work of the author <cit.>, published in International Journal of Theoretical Physics (2020). In particular the Least Quare Problem (LSP) and the Linear Regression Problem (LRP) was discussed. In this second paper we continue to analyze and construct the least square quantum neural network (LS-QNN), the polynomial interpolation quantum neural network (PI-QNN), the polynomial regression quantum neural network (PR-QNN) and chi-squared quantum neural network (χ^2-QNN). We use the corresponding solution or tests as the threshold for the corresponding training rules.

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