Portfolio optimization of bank credits with interval returns: Empirical evidence from Iran

Author:

Nahvi Abouzar1ORCID,Ghorbani Mohammad2ORCID,Sabouhi Sabouni Mahmoud2ORCID,Dourandish Arash3ORCID

Affiliation:

1. Ph.D. Student, Department of Agricultural Economics, Ferdowsi University of Mashhad

2. Ph.D., Professor, Department of Agricultural Economics, Ferdowsi University of Mashhad

3. Ph.D., Associate Professor, Department of Agricultural Economics, Ferdowsi University of Mashhad

Abstract

Bank credit is one of the main sources of spending on productivity and economic services. However, because of the limitations in its amount, accurate planning is essential to optimize its allocation to applicants. Despite the total volume of credits allocated to the agricultural sector, as well as the large number of applicants and sub-sectors applying for these facilities, there is still no clear pattern for the optimal allocation of agricultural bank credits in Iran. It is bank managers who must decide on the distribution of financial capital in a competitive environment. Based on this fact, the paper investigates the optimum portfolio composition of the Agricultural Bank credits in accordance with optimistic, pessimistic, and collaborative strategies by using an interval non-linear multi-objective programming model and considering three different states in determining the rate of return using a genetic algorithm. The results showed that the current pattern of the distribution of bank credits is estimated as different from the optimal one. In the optimum patterns estimated in all states, the agriculture, agricultural services, animal husbandry, aviculture and greenhouses sections were assigned the largest shares in their optimum portfolio combination. Managers can choose their desired model according to three studied strategies and depending on the importance, different estimates of return, and risk of each of them.

Publisher

LLC CPC Business Perspectives

Subject

Finance,Management of Technology and Innovation,Marketing,Organizational Behavior and Human Resource Management,Law

Reference21 articles.

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2. Aryanezhad, M. B., Malekly, H., & Karimi Nasab, M. (2011). A fuzzy random multi-objective approach for portfolio selection. Journal of Industrial Engineering International, 7(13), 12-21. - https://www.sid.ir/en/journal/ViewPaper.aspx?id=203014

3. Portfolio optimization problems in different risk measures using genetic algorithm

4. Investment Portfolio Optimization by Applying a Genetic Algorithm-based Approach

5. Neuro-Based Artificial Intelligence Model for Loan Decisions

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