2021
DOI: 10.1007/s11227-021-03943-w
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Stock exchange trading optimization algorithm: a human-inspired method for global optimization

Abstract: In this paper, a human-inspired optimization algorithm called stock exchange trading optimization (SETO) for solving numerical and engineering problems is introduced. The inspiration source of this optimizer is the behavior of traders and stock price changes in the stock market. Traders use various fundamental and technical analysis methods to gain maximum profit. SETO mathematically models the technical trading strategy of traders to perform optimization. It contains three main actuators including rising, fal… Show more

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Cited by 43 publications
(8 citation statements)
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“…The fourth class of population-based meta-heuristic optimization algorithm, Human-Based algorithms imitates human behaviour, supremacy and intelligence. Few of the human-based algorithms as depicted in the figure are listed below: Cultural Algorithm [69], Imperialist Competitive Algorithm [70], Teaching Learning-Based Optimization [71], Brain Storm Optimization [72], Human Behavior-Based Optimization [73], Human Mental Search [74], Social Engineering Optimizer [75], Queuing Search Algorithm [76], Search and Rescue Optimization [77], Life Choice-Based Optimization [78], Social Ski-Driver Optimization [79], Gaining Sharing Knowledge-Based Algorithm [80], Future Search Algorithm [81], Forensic-Based Investigation Optimization [82], Political Optimizer [83], Heap-Based Optimizer [84], Human Urbanization Algorithm [85], Battle Royale Optimization [86], Corona virus Herd Immunity Optimization [87], Passing Vehicle Search [88], Jaya Algorithm [89], Seeker Optimization Algorithm [90], Interior Search Algorithm [91], Soccer League Competition Algorithm [92], Exchange Market Algorithm [93], Group Counseling Optimization Algorithm [94], Tug of War Optimization [95], Most Valuable Player Algorithm [96], Volleyball Premier League Algorithm [97], Dynastic Optimization Algorithm [98], Focus Group [99], Stock Exchange Trading Optimization [100], Anti Corona virus Optimization Algorithm [101], Socio Evolution and Learning Optimization [102], League Championship Algorithm [103], Ideology Algorithm …”
Section: Introductionmentioning
confidence: 99%
“…The fourth class of population-based meta-heuristic optimization algorithm, Human-Based algorithms imitates human behaviour, supremacy and intelligence. Few of the human-based algorithms as depicted in the figure are listed below: Cultural Algorithm [69], Imperialist Competitive Algorithm [70], Teaching Learning-Based Optimization [71], Brain Storm Optimization [72], Human Behavior-Based Optimization [73], Human Mental Search [74], Social Engineering Optimizer [75], Queuing Search Algorithm [76], Search and Rescue Optimization [77], Life Choice-Based Optimization [78], Social Ski-Driver Optimization [79], Gaining Sharing Knowledge-Based Algorithm [80], Future Search Algorithm [81], Forensic-Based Investigation Optimization [82], Political Optimizer [83], Heap-Based Optimizer [84], Human Urbanization Algorithm [85], Battle Royale Optimization [86], Corona virus Herd Immunity Optimization [87], Passing Vehicle Search [88], Jaya Algorithm [89], Seeker Optimization Algorithm [90], Interior Search Algorithm [91], Soccer League Competition Algorithm [92], Exchange Market Algorithm [93], Group Counseling Optimization Algorithm [94], Tug of War Optimization [95], Most Valuable Player Algorithm [96], Volleyball Premier League Algorithm [97], Dynastic Optimization Algorithm [98], Focus Group [99], Stock Exchange Trading Optimization [100], Anti Corona virus Optimization Algorithm [101], Socio Evolution and Learning Optimization [102], League Championship Algorithm [103], Ideology Algorithm …”
Section: Introductionmentioning
confidence: 99%
“…To investigate the performance of ACVO in solving engineering applications, it is evaluated on seven real-world engineering problems. These problems are drawn from CEC2011 competition (Das and Suganthan 2012 ) and related literature (Emami 2020 , 2021 ), and include the frequency-modulated sound waves (FMSW), static economic load dispatch (SELD), transmission network expansion planning (TNEP), spread spectrum radar poly phase code design (SSRPCD), speed reducer design (SRD), welded beam design (WBD), and rolling element bearing design (REBD). The characteristics of FMSW, SELD, TNEP, and SSRPCD problems are summarized in Table 17 .…”
Section: Experiments and Analysismentioning
confidence: 99%
“…This maximization problem consists of 9 design constraints and 10 geometric variables to handle the geometric-based and assembly restrictions. The mathematical definition of the problem is as follows (Emami 2021 ): The results generated by ACVO and counterpart algorithms on REBD problems are summarized in Table 21 . The results prove that the ACVO shows the best design and attains better performances compared with other algorithms.…”
Section: Experiments and Analysismentioning
confidence: 99%
“…Using lattice conversion, together with Taylor's first series estimation of natural logarithm, they approximated a nonlinear stochastic hybrid optimization model with its linear equivalent. Some authors have used meta-heuristic algorithms to optimize the portfolio, such as the HI algorithm [ 50 ], WOA algorithm [ 51 , 52 ], ICA-FA algorithm [ 53 ], GWO algorithm [ 54 , 55 ], and the IWO algorithm [ 56 ].…”
Section: Literature Reviewmentioning
confidence: 99%