Chaotic evolutionary multi-objective optimization for multivariate pair trading in tehran stock exchange: the distance approach

Purpose: Pair formation is an important step in pair trading that has only been examined manually or through numerical instructions. These methods fail in the multivariate mode and do not consider conflicting goals in the problem structure. In this research, a method is presented to create multivari...

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Main Authors: Hossein Nikoo, Jamal Barzgari khanagha, Hamid Reza Mirzaei
Format: Article
Language:fas
Published: Ayandegan Institute of Higher Education, Tonekabon, 2024-06-01
Series:تصمیم گیری و تحقیق در عملیات
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Online Access:https://www.journal-dmor.ir/article_193261_24b454b12f9f944b0b5035f79c922fbf.pdf
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author Hossein Nikoo
Jamal Barzgari khanagha
Hamid Reza Mirzaei
author_facet Hossein Nikoo
Jamal Barzgari khanagha
Hamid Reza Mirzaei
author_sort Hossein Nikoo
collection DOAJ
description Purpose: Pair formation is an important step in pair trading that has only been examined manually or through numerical instructions. These methods fail in the multivariate mode and do not consider conflicting goals in the problem structure. In this research, a method is presented to create multivariate pair combinations by considering contradictory multiple goals in stock pair trading.Methodology: In this study, the statistical sample is limited to the top 30 companies listed on the Tehran Stock Exchange due to the need for high-frequency transactions. The problem is developed in the form of a Mixed Integer Programming (MIP) model, and due to non-convex constraints and exponential solution space, a multi-objective genetic algorithm is used to obtain multivariate pair combinations. To achieve multiple goals, the developed type of genetic algorithm, namely, The Chaotic Non-dominated Sorting Genetic Algorithm (CNSGA-II), was used. In this method, chaos theory is used to create the initial population of the genetic algorithm in order to obtain appropriate and high-precision solutions.Findings: The results showed that the use of chaos theory could increase the degree of convergence in evolutionary algorithms. In addition, these results indicate the superiority of the multi-objective pair trading strategy based on the distance approach over the traditional single-objective model.Originality/Value: In order to optimize pair trading, the Non-dominated Sorting Genetic Algorithm was used. Also, the initial population of individuals was created in a multi-objective genetic algorithm based on chaos theory.
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institution Kabale University
issn 2538-5097
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publishDate 2024-06-01
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spelling doaj-art-9ce29640588b4c219f9f7f1d4310802f2025-01-30T15:03:40ZfasAyandegan Institute of Higher Education, Tonekabon,تصمیم گیری و تحقیق در عملیات2538-50972676-61592024-06-019111610.22105/dmor.2022.349048.1628193261Chaotic evolutionary multi-objective optimization for multivariate pair trading in tehran stock exchange: the distance approachHossein Nikoo0Jamal Barzgari khanagha1Hamid Reza Mirzaei2Department of Accounting and Finance, Faculty of Economic, Management and Accounting, Yazd University, Yazd, Iran.Department of Accounting and Finance, Faculty of Economic, Management and Accounting, Yazd University, Yazd, Iran.Department of Accounting and Finance, Faculty of Economic, Management and Accounting, Yazd University, Yazd, Iran.Purpose: Pair formation is an important step in pair trading that has only been examined manually or through numerical instructions. These methods fail in the multivariate mode and do not consider conflicting goals in the problem structure. In this research, a method is presented to create multivariate pair combinations by considering contradictory multiple goals in stock pair trading.Methodology: In this study, the statistical sample is limited to the top 30 companies listed on the Tehran Stock Exchange due to the need for high-frequency transactions. The problem is developed in the form of a Mixed Integer Programming (MIP) model, and due to non-convex constraints and exponential solution space, a multi-objective genetic algorithm is used to obtain multivariate pair combinations. To achieve multiple goals, the developed type of genetic algorithm, namely, The Chaotic Non-dominated Sorting Genetic Algorithm (CNSGA-II), was used. In this method, chaos theory is used to create the initial population of the genetic algorithm in order to obtain appropriate and high-precision solutions.Findings: The results showed that the use of chaos theory could increase the degree of convergence in evolutionary algorithms. In addition, these results indicate the superiority of the multi-objective pair trading strategy based on the distance approach over the traditional single-objective model.Originality/Value: In order to optimize pair trading, the Non-dominated Sorting Genetic Algorithm was used. Also, the initial population of individuals was created in a multi-objective genetic algorithm based on chaos theory.https://www.journal-dmor.ir/article_193261_24b454b12f9f944b0b5035f79c922fbf.pdfpair tradingnon-dominated sorting genetic algorithmchaos theorydistance approach
spellingShingle Hossein Nikoo
Jamal Barzgari khanagha
Hamid Reza Mirzaei
Chaotic evolutionary multi-objective optimization for multivariate pair trading in tehran stock exchange: the distance approach
تصمیم گیری و تحقیق در عملیات
pair trading
non-dominated sorting genetic algorithm
chaos theory
distance approach
title Chaotic evolutionary multi-objective optimization for multivariate pair trading in tehran stock exchange: the distance approach
title_full Chaotic evolutionary multi-objective optimization for multivariate pair trading in tehran stock exchange: the distance approach
title_fullStr Chaotic evolutionary multi-objective optimization for multivariate pair trading in tehran stock exchange: the distance approach
title_full_unstemmed Chaotic evolutionary multi-objective optimization for multivariate pair trading in tehran stock exchange: the distance approach
title_short Chaotic evolutionary multi-objective optimization for multivariate pair trading in tehran stock exchange: the distance approach
title_sort chaotic evolutionary multi objective optimization for multivariate pair trading in tehran stock exchange the distance approach
topic pair trading
non-dominated sorting genetic algorithm
chaos theory
distance approach
url https://www.journal-dmor.ir/article_193261_24b454b12f9f944b0b5035f79c922fbf.pdf
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AT jamalbarzgarikhanagha chaoticevolutionarymultiobjectiveoptimizationformultivariatepairtradingintehranstockexchangethedistanceapproach
AT hamidrezamirzaei chaoticevolutionarymultiobjectiveoptimizationformultivariatepairtradingintehranstockexchangethedistanceapproach