Quantum Extremal Learning
Savvas Varsamopoulos, Evan Philip, Herman W. T. van Vlijmen, Sairam, Menon, Ann Vos, Natalia Dyubankova, Bert Torfs, Anthony Rowe, Vincent E., Elfving

TL;DR
Quantum extremal learning (QEL) is a novel quantum algorithm that combines machine learning and optimization to find input values that extremize a hidden function, effective even with limited data.
Contribution
Introduces QEL, a unified quantum algorithm for extremal learning that integrates variational modeling and quantum optimization on a single quantum circuit.
Findings
Successfully finds extremal values in classical datasets with sparse data
Performs well on synthetic problems including Max-Cut and differential equations
Demonstrates potential for high-dimensional and complex applications
Abstract
We propose a quantum algorithm for `extremal learning', which is the process of finding the input to a hidden function that extremizes the function output, without having direct access to the hidden function, given only partial input-output (training) data. The algorithm, called quantum extremal learning (QEL), consists of a parametric quantum circuit that is variationally trained to model data input-output relationships and where a trainable quantum feature map, that encodes the input data, is analytically differentiated in order to find the coordinate that extremizes the model. This enables the combination of established quantum machine learning modelling with established quantum optimization, on a single circuit/quantum computer. We have tested our algorithm on a range of classical datasets based on either discrete or continuous input variables, both of which are compatible with the…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography
