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Birnbaum-Saunders autoregressive conditional duration models applied to high-frequency financial data

机译:Birnbaum-Saunders自动进口条件持续时间模型适用于高频财务数据

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Modern financial markets now record the precise time of each stock trade, along with price and volume, with the aim of analysing the structure of the times between trading events-leading to a big data problem. In this paper, we propose and compare two Birnbaum-Saunders autoregressive conditional duration models specified in terms of time-varying conditional median and mean durations. These models provide a novel alternative to the existing autoregressive conditional duration models due to their flexibility and ease of estimation. Diagnostic tools are developed to allowgoodness-of-fit assessment and to detect departures from assumptions, including the presence of outliers and influential cases. These diagnostic tools are based on the parameter estimates using residual analysis and the Cook distance for global influence, and different perturbation schemes for local influence. A thorough Monte Carlo study is presented to evaluate the performance of the maximum likelihood estimators, and the forecasting ability of the models is assessed using the traditional and density forecast evaluation techniques. The Monte Carlo study suggests that the parameter estimators are asymptotically unbiased, consistent and normally distributed. Finally, a full analysis of a real-world financial transaction data set, from the German DAX in 2016, is presented to illustrate the proposed approach and to compare the fitting and forecasting performances with existing models in the literature. One case related to the duration time is identified as potentially influential, but its removal does not change resulting inferences demonstrating the robustness of the proposed approach. Fitting and forecasting performances favor the proposed models and, in particular, the median-based approach gives additional protection against outliers, as expected.
机译:现代金融市场现在记录每股股票交易的确切时间,以及价格和体积,目的是分析交易活动之间的时代结构 - 导致大数据问题。在本文中,我们提出并比较了在时变条件中位和平均持续时间方面规定的两个Birnbaum-Saunders自回归条件持续时间模型。由于它们的灵活性和易于估计,这些模型为现有的自回归条件持续时间模型提供了一种新颖的替代品。开发诊断工具以允许适合拟合的评估,并检测假设的偏离,包括异常值和有影响的情况。这些诊断工具基于使用残差分析的参数估计和用于全局影响的厨师距离,以及用于局部影响的不同扰动方案。提出了一种彻底的Monte Carlo研究以评估最大似然估计的性能,并且使用传统和密度预测评估技术评估模型的预测能力。 Monte Carlo的研究表明,参数估计器是渐近的,一致,通常分布的渐近。最后,提出了对2016年德国达克达的现实世界金融交易数据集的完整分析,以说明所提出的方法,并比较文献中现有模型的拟合和预测性能。与持续时间有关的一个案例被识别为潜在的有影响力,但其删除不会改变导致推断的导致展示所提出的方法的稳健性。拟合和预测表演有利于提出的模型,特别是基于中位数的方法,如预期的那样,对异常值提供了额外的保护。

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