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   A modular Takagi-Sugeno-Kang (TSK) system based on a modified hybrid soft clustering for stock selection  
   
نویسنده mousavi s. ,esfahanipour a. ,fazel zarandi m.h.
منبع scientia iranica - 2021 - دوره : 28 - شماره : 4-e - صفحه:2342 -2360
چکیده    This study presents a new hybrid intelligent system with ensemble learning for stock selection using the fundamental information of companies. the system uses the selected financial ratios of each company as input variables and ranks the candidate stocks. due to the different characteristics of the companies from different activity sectors, modular system for stock selection may show a better performance than an individual system. here, a hybrid soft clustering algorithm was proposed to eliminate the noise and partition the input dataset into more homogeneous overlapped subsets. the proposed clustering algorithm benefits from the strengths of the fuzzy, possibilistic and rough clustering to develop a modular system. an individual takagi-sugeno-kang (tsk) system was extracted from each subset using an artificial neural network and genetic algorithm. to integrate the outputs of the individual tsk systems, a new weighted ensemble strategy was proposed. the performance of the proposed system was evaluated among 150 companies listed on tehran stock exchange (tse) regarding information coefficient, classification accuracy, and appreciation in stock price. the experimental results show that the proposed modular tsk system significantly outperforms the single tsk system as well as other ensemble models using different decomposition and combination strategies.
کلیدواژه Intelligent modular systems; Ensemble learning; Hybrid rough-fuzzy clustering; TSK fuzzy rule-based system; Stock selection; Tehran Stock Exchange (TSE).
آدرس meybod university, department of industrial engineering, Iran, amirkabir university of technology, department of industrial engineering and management systems, Iran, amirkabir university of technology, department of industrial engineering and management systems, Iran
 
     
   
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