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Dynamic Portfolio Optimization with Real Datasets Using Quantum Processors and Quantum-Inspired Tensor Networks

Author

Listed:
  • Samuel Mugel
  • Carlos Kuchkovsky
  • Escolastico Sanchez
  • Samuel Fernandez-Lorenzo
  • Jorge Luis-Hita
  • Enrique Lizaso
  • Roman Orus

Abstract

In this paper we tackle the problem of dynamic portfolio optimization, i.e., determining the optimal trading trajectory for an investment portfolio of assets over a period of time, taking into account transaction costs and other possible constraints. This problem is central to quantitative finance. After a detailed introduction to the problem, we implement a number of quantum and quantum-inspired algorithms on different hardware platforms to solve its discrete formulation using real data from daily prices over 8 years of 52 assets, and do a detailed comparison of the obtained Sharpe ratios, profits and computing times. In particular, we implement classical solvers (Gekko, exhaustive), D-Wave Hybrid quantum annealing, two different approaches based on Variational Quantum Eigensolvers on IBM-Q (one of them brand-new and tailored to the problem), and for the first time in this context also a quantum-inspired optimizer based on Tensor Networks. In order to fit the data into each specific hardware platform, we also consider doing a preprocessing based on clustering of assets. From our comparison, we conclude that D-Wave Hybrid and Tensor Networks are able to handle the largest systems, where we do calculations up to 1272 fully-connected qubits for demonstrative purposes. Finally, we also discuss how to mathematically implement other possible real-life constraints, as well as several ideas to further improve the performance of the studied methods.

Suggested Citation

  • Samuel Mugel & Carlos Kuchkovsky & Escolastico Sanchez & Samuel Fernandez-Lorenzo & Jorge Luis-Hita & Enrique Lizaso & Roman Orus, 2020. "Dynamic Portfolio Optimization with Real Datasets Using Quantum Processors and Quantum-Inspired Tensor Networks," Papers 2007.00017, arXiv.org, revised Dec 2021.
  • Handle: RePEc:arx:papers:2007.00017
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    File URL: http://arxiv.org/pdf/2007.00017
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    Cited by:

    1. Samuel Mugel & Enrique Lizaso & Roman Orus, 2020. "Use Cases of Quantum Optimization for Finance," Papers 2010.01312, arXiv.org.

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