A Quantum Computing-based System for Portfolio Optimization using Future
Asset Values and Automatic Reduction of the Investment Universe
- URL: http://arxiv.org/abs/2309.12627v3
- Date: Wed, 27 Sep 2023 09:25:55 GMT
- Title: A Quantum Computing-based System for Portfolio Optimization using Future
Asset Values and Automatic Reduction of the Investment Universe
- Authors: Eneko Osaba, Guillaume Gelabert, Esther Villar-Rodriguez, Ant\'on Asla
and Izaskun Oregi
- Abstract summary: We present a system called Quantum Computing-based System for Portfolio Optimization with Future Asset Values and Automatic Universe Reduction (Q4FuturePOP)
Q4FuturePOP includes an automatic universe reduction module, which is conceived to intelligently reduce the complexity of the problem.
- Score: 0.40498500266986387
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: One of the problems in quantitative finance that has received the most
attention is the portfolio optimization problem. Regarding its solving, this
problem has been approached using different techniques, with those related to
quantum computing being especially prolific in recent years. In this study, we
present a system called Quantum Computing-based System for Portfolio
Optimization with Future Asset Values and Automatic Universe Reduction
(Q4FuturePOP), which deals with the Portfolio Optimization Problem considering
the following innovations: i) the developed tool is modeled for working with
future prediction of assets, instead of historical values; and ii) Q4FuturePOP
includes an automatic universe reduction module, which is conceived to
intelligently reduce the complexity of the problem. We also introduce a brief
discussion about the preliminary performance of the different modules that
compose the prototypical version of Q4FuturePOP.
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