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Stock Price Prediction Through the Mixture of Gaussian Processes via the Precise Hard-cut EM Algorithm

机译:通过精确的硬切割EM算法通过混合高斯过程预测股价

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In this paper, the mixture of Gaussian processes (MGP) is applied to model and predict the time series of stock prices. Methodically, the precise hard-cut expectation maximization (EM) algorithm for MGPs is utilized to learn the parameters of the MGP model from stock prices data. It is demonstrated by the experiments that the MGP model with the precise hard-cut EM algorithm can be successfully applied to the prediction of stock prices, and outperforms the typical regression models and algorithms.
机译:在本文中,将高斯过程的混合(MGP)应用于建模和预测股票价格的时间序列。有条理地,用于MGP的精确的硬切期望最大化(EM)算法被用来从股票价格数据中学习MGP模型的参数。实验证明,采用精确的硬切EM算法的MGP模型可以成功地应用于股票价格的预测,其性能优于典型的回归模型和算法。

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