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Model-Free Time-Aggregated Predictions for Econometric Datasets

机译:无模型时间汇总用于计量计量数据集的预测

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Forecasting volatility from econometric datasets is a crucial task in finance. To acquire meaningful volatility predictions, various methods were built upon GARCH-type models, but these classical techniques suffer from instability of short and volatile data. Recently, a novel existing normalizing and variance-stabilizing (NoVaS) method for predicting squared log-returns of financial data was proposed. This model-free method has been shown to possess more accurate and stable prediction performance than GARCH-type methods. However, whether this method can sustain this high performance for long-term prediction is still in doubt. In this article, we firstly explore the robustness of the existing NoVaS method for long-term time-aggregated predictions. Then, we develop a more parsimonious variant of the existing method. With systematic justification and extensive data analysis, our new method shows better performance than current NoVaS and standard GARCH(1,1) methods on both short- and long-term time-aggregated predictions. The success of our new method is remarkable since efficient predictions with short and volatile data always carry great importance. Additionally, this article opens potential avenues where one can design a model-free prediction structure to meet specific needs.
机译:从经济学数据集预测波动性是金融中至关重要的任务。为了获得有意义的波动性预测,在GARCH型模型上建立了各种方法,但这些经典技术遭受了短暂和挥发性数据的不稳定性。最近,提出了一种新的现有正常化和方差稳定(NOVAS)方法,用于预测财务数据的平方返回。该无模型方法已经显示出比GARCH型方法具有更准确和稳定的预测性能。然而,这种方法是否可以维持这种高性能的长期预测仍然有疑问。在本文中,我们首先探讨了现有Novas方法的鲁棒性,以便长期汇总预测。然后,我们开发了现有方法的更加苛刻的变体。通过系统的理由和广泛的数据分析,我们的新方法比当前Novas和标准GARCH(1,1)方法显示出更好的性能,以及在短期和长期时间汇总预测中的方法。我们的新方法的成功是显着的,因为具有短暂和挥发性数据的高效预测总是具有重要意义。此外,本文将打开潜在的途径,其中可以设计无模型预测结构以满足特定需求。

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