Fuzzy Expert System for Stock Portfolio Selection: An Application to
Bombay Stock Exchange
- URL: http://arxiv.org/abs/2204.13385v1
- Date: Thu, 28 Apr 2022 10:01:15 GMT
- Title: Fuzzy Expert System for Stock Portfolio Selection: An Application to
Bombay Stock Exchange
- Authors: Gour Sundar Mitra Thakur, Rupak Bhattacharyyab, Seema Sarkar (Mondal)
- Abstract summary: Fuzzy expert system model is proposed to evaluate and rank the stocks under Bombay Stock Exchange (BSE)
The performance of the model proved to be satisfactory for short-term investment period when compared with the recent performance of the stocks.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Selection of proper stocks, before allocating investment ratios, is always a
crucial task for the investors. Presence of many influencing factors in stock
performance have motivated researchers to adopt various Artificial Intelligence
(AI) techniques to make this challenging task easier. In this paper a novel
fuzzy expert system model is proposed to evaluate and rank the stocks under
Bombay Stock Exchange (BSE). Dempster-Shafer (DS) evidence theory is used for
the first time to automatically generate the consequents of the fuzzy rule base
to reduce the effort in knowledge base development of the expert system. Later
a portfolio optimization model is constructed where the objective function is
considered as the ratio of the difference of fuzzy portfolio return and the
risk free return to the weighted mean semi-variance of the assets that has been
used. The model is solved by applying Ant Colony Optimization (ACO) algorithm
by giving preference to the top ranked stocks. The performance of the model
proved to be satisfactory for short-term investment period when compared with
the recent performance of the stocks.
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