Classical versus quantum models in machine learning: Insights from a finance application

Javier Alcazar, Vicente Leyton-Ortega, Alejandro Perdomo-Ortiz

Research output: Contribution to journalArticlepeer-review

41 Scopus citations

Abstract

Although several models have been proposed towards assisting machine learning (ML) tasks with quantum computers, a direct comparison of the expressive power and efficiency of classical versus quantum models for datasets originating from real-world applications is one of the key milestones towards a quantum ready era. Here, we take a first step towards addressing this challenge by performing a comparison of the widely used classical ML models known as restricted Boltzmann machines (RBMs), against a recently proposed quantum model, now known as quantum circuit Born machines (QCBMs). Both models address the same hard tasks in unsupervised generative modeling, with QCBMs exploiting the probabilistic nature of quantum mechanics and a candidate for near-term quantum computers, as experimentally demonstrated in three different quantum hardware architectures to date. To address the question of the performance of the quantum model on real-world classical data sets, we construct scenarios from a probabilistic version out of the well-known portfolio optimization problem in finance, by using time-series pricing data from asset subsets of the S&P500 stock market index. It is remarkable to find that, under the same number of resources in terms of parameters for both classical and quantum models, the quantum models seem to have superior performance on typical instances when compared with the canonical training of the RBMs. Our simulations are grounded on a hardware efficient realization of the QCBMs on ion-trap quantum computers, by using their native gate sets, and therefore readily implementable in near-term quantum devices.

Original languageEnglish
JournalMachine Learning: Science and Technology
Volume1
Issue number3
DOIs
StatePublished - Sep 1 2020

Funding

The authors would like to acknowledge Marcello Benedetti, Dax Koh, and Yudong Cao for useful feedback on an early version of this manuscript. V.L-O was supported by ASCR Quantum Testbed Pathfinder Program at Oak Ridge National Laboratory under FWP #ERKJ332.

FundersFunder number
Advanced Scientific Computing Research
Oak Ridge National LaboratoryFWP #ERKJ332

    Keywords

    • Generative models
    • Quantum finance
    • Quantum machine learning
    • Unsupervised machine learning

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