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Autonomous self-evolving forecasting models for price movement in high frequency trading: Evidence from Taiwan

机译:高频交易价格运动的自动自转预测模型:台湾证据

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Among FinTech research and applications, forecasting financial time series data has been a challenging task because this kind of data is typically quite noisy and non-stationary. A recent line of financial research centers around trading through financial data on the microscopic level, which is the holy grail of high-frequency trading (HFT), as the higher the data frequency, the more profitable opportunities may appear. The advancement in HFT modeling has also facilitated more understanding towards price formation because the supply and demand of a stock can be comprehended more easily from the microstructure of the order book. Instead of traditional statistical methods, there has been increasing demand for the development of more reliable prediction models due to the recent progress in Computational Intelligence (CI) technologies. In this study, we aim to develop novel CI-based methodologies for the forecasting task of price movement in HFT. Our goal is to conduct a study for autonomous genetic-based models that allow the forecasting systems to self-evolve. The results show that our proposed method can improve upon the previous ones and advance the current state of Fintech research.
机译:在FINTECH研究和应用中,预测财务时间序列数据是一个具有挑战性的任务,因为这种数据通常是非常嘈杂和非稳定性的。最近一系列的金融研究中心围绕交易通过金融数据进行了微观水平,这是高频交易(HFT)的圣杯,随着数据频率越高,可能出现较差的机会。 HFT建模的进步还促进了对价格形成的更多理解,因为股票的供求可以从订单书的微观结构中更容易地理解。代替传统的统计方法,由于计算智能(CI)技术的进展,对更可靠的预测模型的发展越来越大。在这项研究中,我们的目标是开发基于CI的基于CI的方法,以便预测HFT价格流动的预测任务。我们的目标是为自主基于遗传的模型进行研究,使预测系统能够自我发展。结果表明,我们提出的方法可以改善前一体的方法,并推进当前金融技术的研究。

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