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An effective stock portfolio trading strategy using genetic algorithms and weighted fuzzy time series

机译:使用遗传算法和加权模糊时间序列的一种有效的股票投资组合交易策略

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Investments in a stock market may incur risk. To reduce the risk of an investment, many portfolio selection methods have been proposed. By buying several stocks together, a portfolio selection method aims at maximizing the return of an investment given a predefined risk level. To build an optimal stock portfolio, one needs to select stocks and decide the proportion of the capital on each stock. Also, it is very important to decide when to buy or sell a stock portfolio. In this paper, we present a genetic algorithm to build stock portfolios. The proposed method comprises a genetic algorithm and a weighted fuzzy time series. The genetic algorithm is used to construct an optimal portfolio while the weighted fuzzy time series is used to predict the return of the portfolio which in turn is used to formulate the fitness function of the genetic algorithm. Furthermore, we propose the periodically checking and stop-loss point policies to decide selling and buying time points of the stock portfolio. The experiments on the stocks of Taiwan 50 show that the proposed method outperforms the Taiwan 50 index and the TAIEX index in terms of the 7-year average return rate.
机译:股票市场的投资可能会产生风险。为降低投资风险,提出了许多组合选择方法。通过将多台股票一起购买,投资组合选择方法旨在最大限度地提高投资的回报,给出了预定的风险水平。为了建立最佳的股票投资组合,需要选择股票并决定每股股票的资本比例。此外,决定何时购买或出售股票组合非常重要。在本文中,我们提出了一种遗传算法来构建股票投资组合。该方法包括遗传算法和加权模糊时间序列。遗传算法用于构建最佳组合,而加权模糊时间序列用于预测投资组合的返回,其又用于制定遗传算法的适应性函数。此外,我们提出了定期检查和止损点政策,以决定股票组合的销售和购买时间点。台湾股票实验表明,该方法在7年平均回报率方面优于台湾50指数和TAIEX指数。

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