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A Hybrid Model For Stock Market Forecasting And Portfolio Selection Based On Arx, Grey System And Rs Theories

机译:基于Arx,灰色系统和Rs理论的股票市场预测与投资组合混合模型

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In this study, the moving average autoregressive exogenous (ARX) prediction model is combined with grey systems theory and rough set (RS) theory to create an automatic stock market forecasting and portfolio selection mechanism. In the proposed approach, financial data are collected automatically every quarter and are input to an ARX prediction model to forecast the future trends of the collected data over the next quarter or half-year period. The forecast data is then reduced using a GM(1,N) model, clustered using a K-means clustering algorithm and then supplied to a RS classification module which selects appropriate investment stocks by applying a set of decision-making rules. Finally, a grey relational analysis technique is employed to specify an appropriate weighting of the selected stocks such that the portfolio's rate of return is maximized. The validity of the proposed approach is demonstrated using electronic stock data extracted from the financial database maintained by the Taiwan Economic Journal (TEJ). The predictive ability and portfolio results obtained using the proposed hybrid model are compared with those of a GM(1,1) prediction method. It is found that the hybrid method not only has a greater forecasting accuracy than the GM( 1,1) method, but also yields a greater rate of return on the selected stocks.
机译:在这项研究中,移动平均自回归外生(ARX)预测模型与灰色系统理论和粗糙集(RS)理论相结合,创建了一个自动的股市预测和投资组合选择机制。在建议的方法中,财务数据每季度自动收集一次,并输入到ARX预测模型中,以预测下一季度或半年期间所收集数据的未来趋势。然后,使用GM(1,N)模型对预测数据进行缩减,使用K-means聚类算法对预测数据进行聚类,然后将其提供给RS分类模块,该模块通过应用一组决策规则来选择合适的投资股票。最后,采用灰色关联分析技术来指定选定股票的适当权重,以使投资组合的回报率最大化。通过从《台湾经济日报》(TEJ)维护的财务数据库中提取的电子库存数据证明了该方法的有效性。使用建议的混合模型获得的预测能力和投资组合结果与GM(1,1)预测方法进行了比较。发现混合方法不仅具有比GM(1,1)方法更高的预测准确性,而且还为选定的股票带来更高的回报率。

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