Deciding when to buy or sell a stock is not an easy task because the market is hard to predict, being influenced by political and economic factors. Thus, methodologies based on computational intelligence have been applied to this challenging problem. In this work, every day the stocks are ranked by technique for order preference by similarity to ideal solution (TOPSIS) using technical analysis criteria, and the most suitable stock is selected for purchase. Even so, it may occur that the market is not favorable to purchase on certain days, or even, the TOPSIS make an incorrect selection. To improve the selection, another method should be used. So, a hybrid model composed of empirical mode decomposition (EMD) and extreme learning machine (ELM) is proposed. The EMD decomposes the series into several sub-series, and thus the main omponent (trend) is extracted. This component is processed by the ELM, which performs the prediction of the next element of component. If the value predicted by the ELM is greater than the last value, then the purchase of the stock is confirmed. The method was applied in a universe of 50 stocks in the Brazilian market. The selection made by TOPSIS showed promising results when compared to the random selection and the return generated by the Bovespa index. Confirmation with the EMD-ELM hybrid model was able to increase the percentage of profit tradings.
翻译:购买或出售股票不是一件容易的任务,因为市场难以预测,受政治和经济因素的影响,市场很难预测何时购买或出售股票,因此,对这个具有挑战性的问题应用了基于计算情报的方法。在这项工作中,每天根据技术分析标准,按照顺序偏好,与理想解决办法(TOPSIS)相似,使用技术分析标准,选择最合适的股票,选择购买股票。即便如此,也可能出现市场不赞成在某些日子里购买的情况,甚至可能出现TOPSIS作出错误的选择。为了改进选择,应当使用另一种方法。因此,提出了由经验模式分解(EMD)和极端学习机器(ELM)组成的混合模型。EMD将系列转换成几个子系列,从而提取了主要的占位(trend),这一组成部分由ELM处理,该模型对下一个组成部分进行预测。如果ELM预测的价值大于上一个值,那么购买该股票就会得到证实。在选择巴西市场中进行有希望的股票回报时,将SISA值与EM IM 和IM IM 随机选择的结果应用了。