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Online evolving fuzzy rule-based prediction model for high frequency trading financial data stream

机译:基于高频进化模糊规则的高频交易金融数据流预测模型

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Analyzing and predicting the high frequency trading (HFT) financial data stream is very challenging due to the fast arrival times and large amount of the data samples. Aiming at solving this problem, an online evolving fuzzy rule-based prediction model is proposed in this paper. Because this prediction model is based on evolving fuzzy rule-based systems and a novel, simpler form of data density, it can autonomously learn from the live data stream, automatically build/remove its rules and recursively update the parameters. This model responds quickly to all unpredictable sudden changes of financial data and re-adjusts itself to follow the new data pattern. Experimental results show the excellent prediction performance of the proposed approach with real financial data stream regardless of quick shifts of data patterns and frequent appearances of abnormal data samples.
机译:由于快速到达时间和大量数据样本,因此分析和预测高频交易(HFT)金融数据流非常具有挑战性。为了解决这一问题,本文提出了一种基于在线演化的基于模糊规则的预测模型。由于此预测模型基于不断发展的基于模糊规则的系统和新颖,更简单的数据密度形式,因此它可以从实时数据流中自主学习,自动构建/删除其规则并递归更新参数。此模型对所有不可预测的财务数据突然变化做出快速响应,并重新调整自身以遵循新的数据模式。实验结果表明,无论数据模式快速变化和异常数据样本的频繁出现,该方法在真实财务数据流中均具有出色的预测性能。

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