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.
翻译:在分配投资比率之前,选择适当的股票始终是投资者的一项关键任务。 股票业绩中存在许多影响因素,促使研究人员采用各种人工智能(AI)技术,使这项具有挑战性的任务更容易完成。本文建议采用一个新的模糊专家系统模型,根据孟买股票交易所(BSE)对股票进行评估和排序。利用Dempster-Shafer(DS)证据理论,首次自动产生模糊规则基础的结果,以减少专家系统知识库开发的努力。后来,在将客观功能视为模糊投资组合回报差额和风险自由返回所使用资产加权平均半变差的比率时,组合优化模型的绩效证明与最近股票业绩相比,短期投资期的绩效令人满意。