info:eu-repo/semantics/article
Theory of machine learning based on nonrelativistic quantum mechanics
Fecha
2021Registro en:
2197499
International Journal of Quantum Information
Autor
Nieto-Chaupis, Huber
Institución
Resumen
The goal of this paper is the presentation of the elementary procedures that normally are done in nonrelativistic Quantum Mechanics in terms of the principles of Machine Learning. In essence, this paper discusses Mitchell's criteria, whose block fundamental dictates that the universal evolution of any system is composed by three fundamental steps: (i) Task, (ii) Performance and (iii) Experience. In this paper, the quantum mechanics formalism reflected on the usage of evolution operator and Green's function are assumed to be part of mechanisms that are inherently engaged to the Machine Learning philosophy. The action for measuring observables through experiments and the intrinsic apparition of statistical or systematic errors are discussed in terms of "quantum learning". © 2021 World Scientific Publishing Company.