Using the Quantum Potential in Elementary Portfolio Management: Some Initial Ideas
Abstract
:1. Introduction
2. The Quantum Potential and a First Look at What We Call ‘Quantum Risk’
3. Portfolio Optimization
- I
- Data input:In the process of optimization, the first step is to collect each component of the portfolio time series data and enter them into the program as input. The markets used in the following manuscript as input of the algorithm are Dow Jones industrial, S&P 500 composite, FTSE 100, TOPIX, DAX 30 performance, NIKKEI 225, Korea SE composite and the Shanghai SE A Share. Each of the aforementioned indices can be traded within stock exchange markets and hence, they can form any arbitrary portfolio.
- II
- Constructing weight population:After the given set of market series, we need an individual set of weights to initialize portfolio construction as indicated in Equation (2). In the genetic algorithm, a group of randomly generated individuals, called population, will be generated. The populations as well as the set of markets series will be the input of the evolving genetic algorithm. The Pseudo-code of the process is presented in the Appendix A.
- III
- Optimization of population:Once we have the initial random populations to start with, we can evolve the population using genetic algorithm techniques and generate new populations with lower risks. The Pseudo-code of the optimization process using genetic algorithm as well as the flowchart of the process is provided for you at the end of the paper.In the above Pseudo-code, data is a list composed of all the markets time-series in which, data[i] would be the time-series of i’th market. At each step of the optimization process, the minimum fitness would be saved in order to be an indication of that step. The next paragraph will depict the results of optimization process discussed in here.
4. Comparing Standard and Quantum Risk
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A. Flowchart of the Optimization Process
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Khaksar, H.; Haven, E.; Nasiri, S.; Jafari, G. Using the Quantum Potential in Elementary Portfolio Management: Some Initial Ideas. Entropy 2021, 23, 180. https://doi.org/10.3390/e23020180
Khaksar H, Haven E, Nasiri S, Jafari G. Using the Quantum Potential in Elementary Portfolio Management: Some Initial Ideas. Entropy. 2021; 23(2):180. https://doi.org/10.3390/e23020180
Chicago/Turabian StyleKhaksar, Hossein, Emmanuel Haven, Sina Nasiri, and Gholamreza Jafari. 2021. "Using the Quantum Potential in Elementary Portfolio Management: Some Initial Ideas" Entropy 23, no. 2: 180. https://doi.org/10.3390/e23020180
APA StyleKhaksar, H., Haven, E., Nasiri, S., & Jafari, G. (2021). Using the Quantum Potential in Elementary Portfolio Management: Some Initial Ideas. Entropy, 23(2), 180. https://doi.org/10.3390/e23020180