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Risk-Based Portfolio Modeling: Kahneman-Tversky Approach

    Authors

    • Saeid Zoudbin
    • Behzad Shahbaee
    • Alireza Bahiraie

    Department of Mathematics, Faculty of Mathematics, Statistics and Computer Sciences, Semnan University, Semnan, Iran

,

Document Type : Original Article

10.52547/jncog.2022.103443
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Abstract

The risk-based portfolio selection problem with investors’ behavioral risk aversion bias under uncertainty is monitored. The main results of this research are developed heuristic approaches for the prospect theory model proposed by Kahneman and Tversky in 1979 as well as an empirical numerical analysis of this model with real data. The main purpose is to impose behavioral features of prospect theory to minimize the risk with a certain level of income to the portfolio selection problem. In this research, the real data of TSE is employed for computational results with regard to the prospect theory model with several stocks as risky assets. In order to investigate empirically the performance of the behaviourally based model, different portfolios are selected with different operating sectors. The aggressive behavior in terms of returns of the prospect theory model with the specific risk has the same output as returns. On the other hand, the certain level of returns as constrained shows minimized risk with the implementation of a behavioral approach in comparison to the conventional approach which is the Markowitz model. The performance of the two behavioral and traditional models are compared and lower risks are obtained by a behavioral approach which shows the optimal portfolio selection and might be used by investors as their investment strategy.

Keywords

  • Portfolio optimization
  • Behavioural finance
  • Prospect theory
  • Risk modeling
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Journal of Neurodevelopmental Cognition
Volume 2, Issue 1 - Serial Number 1
December 2022
Pages 88-97
Files
  • XML
  • PDF 2.55 M
History
  • Receive Date: 10 October 2022
  • Revise Date: 15 November 2022
  • Accept Date: 19 November 2022
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How to cite
  • RIS
  • EndNote
  • Mendeley
  • BibTeX
  • APA
  • MLA
  • HARVARD
  • CHICAGO
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Statistics
  • Article View: 231
  • PDF Download: 495

APA

Zoudbin, S. , Shahbaee, B. and Bahiraie, A. (2022). Risk-Based Portfolio Modeling: Kahneman-Tversky Approach. Journal of Neurodevelopmental Cognition, 2(1), 88-97. doi: 10.52547/jncog.2022.103443

MLA

Zoudbin, S. , , Shahbaee, B. , and Bahiraie, A. . "Risk-Based Portfolio Modeling: Kahneman-Tversky Approach", Journal of Neurodevelopmental Cognition, 2, 1, 2022, 88-97. doi: 10.52547/jncog.2022.103443

HARVARD

Zoudbin, S., Shahbaee, B., Bahiraie, A. (2022). 'Risk-Based Portfolio Modeling: Kahneman-Tversky Approach', Journal of Neurodevelopmental Cognition, 2(1), pp. 88-97. doi: 10.52547/jncog.2022.103443

CHICAGO

S. Zoudbin , B. Shahbaee and A. Bahiraie, "Risk-Based Portfolio Modeling: Kahneman-Tversky Approach," Journal of Neurodevelopmental Cognition, 2 1 (2022): 88-97, doi: 10.52547/jncog.2022.103443

VANCOUVER

Zoudbin, S., Shahbaee, B., Bahiraie, A. Risk-Based Portfolio Modeling: Kahneman-Tversky Approach. Journal of Neurodevelopmental Cognition, 2022; 2(1): 88-97. doi: 10.52547/jncog.2022.103443

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