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Stock trend prediction based on a new status box method and AdaBoost probabilistic support vector machine

机译:基于新状态盒方法和AdaBoost概率支持向量机的股票趋势预测

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Stock trend prediction is regarded as one of the most challenging tasks of financial time series prediction. Conventional statistical modeling techniques are not adequate for stock trend forecasting because of the non-stationarity and non-linearity of the stock market. With this regard, many machine learning approaches are used to improve the prediction results. These approaches mainly focus on two aspects: regression problem of the stock price and prediction problem of the turning points of stock price. In this paper, we concentrate on the evaluation of the current trend of stock price and the prediction of the change orientation of the stock price in future. Then, a new approach named status box method is proposed. Different from the prediction issue of the turning points, the status box method packages some stock points into three categories of boxes which indicate different stock status. And then, some machine learning techniques are used to classify these boxes so as to measure whether the states of each box coincides with the stock price trend and forecast the stock price trend based on the states of the box. These results would support us to make buying or selling strategies. Comparing with the turning points prediction that only considered the features of one day, each status box contains a certain amount of points which represent the stock price trend in a certain period of time. So, the status box reflects more information of stock market. To solve the classification problem of the status box, a special features construction approach is presented. Moreover, a new ensemble method integrated with the AdaBoost algorithm, probabilistic support vector machine (PSVM), and genetic algorithm (GA) is constructed to perform the status boxes classification. To verify the applicability and superiority of the proposed methods, 20 shares chosen from Shenzhen Stock Exchange (SZSE) and 16 shares from National Association of Securities Dealers Automated Quotations (NASDAQ) are applied to perform stock trend prediction. The results show that the status box method not only have the better classification accuracy but also effectively solve the unbalance problem of the stock turning points classification. In addition, the new ensemble classifier achieves preferable profitability in simulation of stock investment and remarkably improves the classification performance compared with the approach that only uses the PSVM or back-propagation artificial neural network (BPN). (C) 2016 Elsevier B.V. All rights reserved.
机译:股票趋势预测被认为是金融时间序列预测中最具挑战性的任务之一。由于股票市场的非平稳性和非线性,传统的统计建模技术不足以进行股票趋势预测。考虑到这一点,许多机器学习方法被用来改善预测结果。这些方法主要集中在两个方面:股票价格的回归问题和股票价格的转折点的预测问题。在本文中,我们集中于对当前股价趋势的评估以及对未来股价变化方向的预测。然后,提出了一种新的状态框方法。与转折点的预测问题不同,状态框方法将一些库存点打包为三个类别的框,用于指示不同的库存状态。然后,使用一些机器学习技术对这些框进行分类,以测量每个框的状态是否与股价趋势一致,并根据框的状态预测股价趋势。这些结果将支持我们制定买卖策略。与仅考虑一天特征的转折点预测相比,每个状态框包含一定数量的点,这些点代表特定时间段内的股价趋势。因此,状态框反映了更多有关股票市场的信息。为了解决状态框的分类问题,提出了一种特殊的特征构造方法。此外,构建了一种新的集成方法,该方法与AdaBoost算法,概率支持向量机(PSVM)和遗传算法(GA)相集成,以进行状态框分类。为了验证所提出方法的适用性和优越性,将使用深圳证券交易所(SZSE)的20股股票和美国证券交易商自动报价协会(NASDAQ)的16股股票进行股票趋势预测。结果表明,状态盒法不仅具有较好的分类精度,而且可以有效地解决股票转折点分类的不平衡问题。此外,与仅使用PSVM或反向传播人工神经网络(BPN)的方法相比,新的集成分类器在股票投资的模拟中实现了较好的获利能力,并显着提高了分类性能。 (C)2016 Elsevier B.V.保留所有权利。

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