Quantum generative modeling for financial time series with temporal correlations
David Dechant, Eliot Schwander, Lucas van Drooge, Charles Moussa, Diego Garlaschelli, Vedran Dunjko, Jordi Tura

TL;DR
This paper explores quantum generative adversarial networks (QGANs) for producing synthetic financial time series that preserve distributional properties and temporal correlations, potentially overcoming limitations of classical methods.
Contribution
It demonstrates that quantum correlations in QGANs can improve the generation of realistic financial time series with desired properties.
Findings
QGANs can generate time series matching target distributions.
Quantum correlations help in capturing temporal dependencies.
Hyperparameters influence the quality of generated data.
Abstract
Quantum generative adversarial networks (QGANs) have been investigated as a method for generating synthetic data with the goal of augmenting training data sets for neural networks. This is especially relevant for financial time series, since we only ever observe one realization of the process, namely the historical evolution of the market, which is further limited by data availability and the age of the market. However, for classical generative adversarial networks it has been shown that generated data may (often) not exhibit desired properties (also called stylized facts), such as matching a certain distribution or showing specific temporal correlations. Here, we investigate whether quantum correlations in quantum inspired models of QGANs can help in the generation of financial time series. We train QGANs, composed of a quantum generator and a classical discriminator, and investigate…
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