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Predicting stock market price using support vector regression

机译:使用支持向量回归预测股市价格

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In this study, support vector regression (SVR) analysis is used as a machine learning technique in order to predict the stock market price as well as to predict stock market trend. Moreover, different types of windowing operators are used as data preprocess or input selection technique for SVR models. This is a new approach which uses different types of windowing functions as data preprocess for predicting time series data. Support vector regression is a useful and powerful machine learning technique to recognize pattern of time series dataset. It can produce good prediction result if the value of important parameters can be determined properly. Different kinds of Windowing operators are used in this experiment in order to feed more reliable inputs into regression models. This study is done on a well known company of Dhaka stock exchange (DSE), named ACI group of company Limited. Four year's historical time series dataset are collected from the DSE from 2009 to 2012, as daily basis for experimentations. Finally, predicted results from Win-SVR models are compared with actual price values of DSE to evaluate the model prediction performance.
机译:在这项研究中,支持向量回归(SVR)分析被用作一种机器学习技术,以便预测股市价格以及预测股市趋势。而且,不同类型的窗口运算符被用作SVR模型的数据预处理或输入选择技术。这是一种新方法,它使用不同类型的窗口功能作为数据预处理来预测时间序列数据。支持向量回归是一种有用且功能强大的机器学习技术,用于识别时间序列数据集的模式。如果可以正确确定重要参数的值,则可以产生良好的预测结果。在本实验中使用了不同类型的Windowing运算符,以便将更可靠的输入反馈到回归模型中。这项研究是在达卡证券交易所(DSE)的一家知名公司,名为ACI Group of Company Limited上进行的。从DSE收集2009年至2012年的四年历史时间序列数据集,作为每天进行实验的基础。最后,将Win-SVR模型的预测结果与DSE的实际价格值进行比较,以评估模型的预测性能。

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