首页> 外文会议>10th Portuguese Conference on Artificial Intelligence, EPIA 2001, 10th, Dec 17-20, 2001, Porto, Portugal >The Use of Domain Knowledge in Feature Construction for Financial Time Series Prediction
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The Use of Domain Knowledge in Feature Construction for Financial Time Series Prediction

机译:领域知识在金融时间序列预测的特征构建中的应用

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Most of the existing data mining approaches to time series prediction use as training data an embed of the most recent values of the time series, following the traditional linear auto-regressive methodologies. However, in many time series prediction tasks the alternative approach that uses derivative features constructed from the raw data with the help of domain theories can produce significant prediction accuracy improvements. This is particularly noticeable when the available data includes multivariate information although the aim is still the prediction of one particular time series. This latter situation occurs frequently in financial time series prediction. This paper presents a method of feature construction based on domain knowledge that uses multivariate time series information. We show that this method improves the accuracy of next-day stock quotes prediction when compared with the traditional embed of historical values extracted from the original data.
机译:遵循传统的线性自回归方法,大多数现有的时间序列预测数据挖掘方法都是使用时间序列的最新值的嵌入作为训练数据。但是,在许多时间序列预测任务中,在域理论的帮助下使用从原始数据构造的派生特征的替代方法可以显着提高预测精度。当可用数据包括多元信息时,这一点尤其明显,尽管目标仍然是对一个特定时间序列的预测。在财务时间序列预测中经常发生后一种情况。本文提出了一种基于领域知识的特征构建方法,该方法使用多元时间序列信息。我们证明,与传统的从原始数据中提取的历史值嵌入方法相比,该方法提高了次日股票报价预测的准确性。

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