Comparisons of performance between quantum-enhanced and classical machine learning algorithms on the IBM Quantum Experience

- Zahorodko, Pavlo V., Semerikov, Serhiy O., Soloviev, V.N., Striuk, A.M., Striuk, Mykola and Shalatska, Hanna M. (2021) Comparisons of performance between quantum-enhanced and classical machine learning algorithms on the IBM Quantum Experience Journal of Physics: Conference Series. XII International Conference on Mathematics, Science and Technology Education (ICon-MaSTEd 2020) 15-17 October 2020, Kryvyi Rih, Ukraine (1840).

[img] Text
2021_Zahorodko_2021_J._Phys. _Conf._Ser._1840_012021.pdf - Published Version

Download (842kB)

Abstract

Machine learning is now widely used almost everywhere, primarily for forecasting. In the broadest sense, the machine learning objective may be summarized as an approximation problem, and the issues solved by various training methods can be reduced to finding the optimal value of an unknown function or restoring a function. At the moment, we have only experimental samples of quantum computers based on classical-quantum logic, when quantum gates are used instead of ordinary logic gates, and probabilistic quantum bits are used instead of deterministic bits. Namely, the probabilistic nature problems that provide for the determination of a certain optimal state from a large set of possible ones on which quantum computers can achieve “quantum supremacy” – an extraordinary (by many orders of magnitude) reduction in the time required to solve the task. The main idea of the work is to identify the possibility of achieving, if not quantum supremacy, then at least a quantum advantage when solving machine learning problems on a quantum computer.

Item Type: Article
Keywords: quantum-enhanced machine learning
Subjects: Science and knowledge. Organization. Computer science. Information. Documentation. Librarianship. Institutions. Publications > 00 Prolegomena. Fundamentals of knowledge and culture. Propaedeutics > 004 Computer science and technology. Computing. Data processing > 004.3 Computer hardware
Science and knowledge. Organization. Computer science. Information. Documentation. Librarianship. Institutions. Publications > 00 Prolegomena. Fundamentals of knowledge and culture. Propaedeutics > 004 Computer science and technology. Computing. Data processing > 004.4 Software
Divisions: Institute for Digitalisation of Education > Department of the Cloud-Вased Systems of ICT in Education
Depositing User: Сергій Олексійович Семеріков
Date Deposited: 08 Oct 2021 19:48
Last Modified: 08 Oct 2021 19:48
URI: https://lib.iitta.gov.ua/id/eprint/726898

Downloads

Downloads per month over past year

Actions (login required)

View Item View Item