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Stock market forecasting using hidden Markov model: a new approach

机译:使用隐马尔可夫模型的股市预测:一种新方法

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This paper presents hidden Markov models (HMM) approach for forecasting stock price for interrelated markets. We apply HMM to forecast some of the airlines stock. HMMs have been extensively used for pattern recognition and classification problems because of its proven suitability for modelling dynamic systems. However, using HMM for predicting future events is not straightforward. Here we use only one HMM that is trained on the past dataset of the chosen airlines. The trained HMM is used to search for the variable of interest behavioural data pattern from the past dataset. By interpolating the neighbouring values of these datasets forecasts are prepared. The results obtained using HMM are encouraging and HMM offers a new paradigm for stock market forecasting, an area that has been of much research interest lately.
机译:本文介绍了隐藏的马尔可夫模型(HMM)接近相关市场预测股价的方法。我们申请嗯预测一些航空公司库存。由于其证明适用于对动态系统的证明适用性,HMMS已被广泛用于模式识别和分类问题。然而,使用HMM来预测未来事件并不简单。在这里,我们只使用在所选航空公司的过去数据集上培训的一个嗯。训练的嗯,用于搜索来自过去数据集的利息行为数据模式的变量。通过内插这些数据集的相邻值,准备了预测。使用HMM获得的结果是令人鼓舞的,嗯HMM为股票市场预测提供了一个新的范式,这是最近研究兴趣的一个区域。

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