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A Hierarchical Beta Process Approach for Financial Time Series Trend Prediction

机译:金融时序趋势预测的分层测试方法方法

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An automatic stock market categorization system would be invaluable to investors and financial experts, providing them with the opportunity to predict a stock price changes with respect to the other stocks. In recent years, clustering all companies in the stock markets based on their similarities in shape of the stock market has increasingly become popular. However, existing approaches may not be practical because the stock price data are high-dimensional data and the changes in the stock price usually occur with shift, which makes the categorization more complex. In this paper, a hierarchical beta process (HBP) based approach is proposed for stock market trend prediction. Preliminary results show that the approach is promising and outperforms other popular approaches.
机译:自动股票市场分类系统对投资者和金融专家来说非常宝贵,为他们提供了预测对其他股票的股票价格变化的机会。近年来,基于股票市场形状的相似之处越来越受欢迎,集群股票市场的所有公司。然而,现有方法可能不是实际的,因为股票价格数据是高维数据,股票价格的变化通常随着转变而发生,这使得分类更复杂。本文提出了基于分层的β过程(HBP)方法,用于股票市场趋势预测。初步结果表明,该方法是有前途和优于其他流行的方法。

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