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Point forecasting of intraday volume using Bayesian autoregressive conditional volume models

机译:贝叶斯自回归条件卷模型的盘中卷点预测

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In this paper, we apply Bayesian inference to model and forecast intraday trading volume, using autoregressive conditional volume (ACV) models, and we evaluate the quality of volume point forecasts. In the empirical application, we focus on the analysis of both in- and out-of-sample performance of Bayesian ACV models estimated for 2-minute trading volume data for stocks quoted on the Warsaw Stock Exchange in Poland. We calculate two types of point forecasts, using either expected values or medians of predictive distributions. We conclude that, in general, all considered models generate significantly biased forecasts. We also observe that the considered models significantly outperform such benchmarks as the naive or rolling means forecasts. Moreover, in terms of root mean squared forecast errors, point predictions obtained within the ACV model with exponential distribution emerge superior compared to those calculated in structures with more general innovation distributions, although in many cases this characteristic turns out to be statistically insignificant. On the other hand, when comparing mean absolute forecast errors, the median forecasts obtained within the ACV models with Burr and generalized gamma distribution are found to be statistically better than other forecasts.
机译:在本文中,我们使用自回归条件卷(ACV)模型来应用贝叶斯推论的模型和预测盘子里交易量,我们评估了体积点预测的质量。在实证申请中,我们专注于分析贝叶斯ACV型号的和空样绩效,估计在波兰华沙证券交易所上引用的2分钟交易量数据。我们使用预测分布的预期值或中位数计算两种类型的点预测。我们得出结论,一般而言,所有考虑的模型都会产生显着偏见的预测。我们还观察到所考虑的模型显着优于这种基准,因为幼稚或滚动装置预测。此外,就根均方预测误差而言,与具有更一般创新分布的结构中计算的指数分布的ACV模型中获得的点预测出现了优越的,尽管在许多情况下,这种特征结果在统计上无关紧要。另一方面,当比较平均绝对预测误差时,发现在具有毛刺和广义伽马分布的ACV模型中获得的中值预测被发现比其他预测更好。

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