论文标题

Harnet:用于实现波动性预测的卷积神经网络

HARNet: A Convolutional Neural Network for Realized Volatility Forecasting

论文作者

Reisenhofer, Rafael, Bayer, Xandro, Hautsch, Nikolaus

论文摘要

尽管深层神经网络在许多应用领域取得了令人印象深刻的成功,但在波动性预测的背景下,神经网络模型尚未被广泛采用。在这项工作中,我们旨在弥合既定时间序列方法之间的概念差距,例如异质自回旋(HAR)模型和最新的深层神经网络模型。新引入的HARNET基于扩张的卷积层的层次结构,该层促进了模型参数数量中模型的接受场的指数增长。 harnets允许明确的初始化方案,以便在优化之前,harnet产生与各自的基线HAR模型相同的预测。特别是在将Qlike误差视为损失函数时,我们发现这种方法显着稳定了harnet的优化。我们评估了针对三个不同股票市场指数的harnets的性能。基于此评估,我们为优化harnet的明确指南制定了指南,并表明harnets可以显着提高其各自的HAR基线模型的预测准确性。在对Harnet学到的过滤权重的定性分析中,我们报告了有关过去信息的预测能力的清晰模式。在上周,昨天和前一天的信息中,昨天的波动率是迄今为止对当今实现的波动预测的最大贡献。在上个月内,单周的重要性在进一步发展时,几乎线性地减少了。

Despite the impressive success of deep neural networks in many application areas, neural network models have so far not been widely adopted in the context of volatility forecasting. In this work, we aim to bridge the conceptual gap between established time series approaches, such as the Heterogeneous Autoregressive (HAR) model, and state-of-the-art deep neural network models. The newly introduced HARNet is based on a hierarchy of dilated convolutional layers, which facilitates an exponential growth of the receptive field of the model in the number of model parameters. HARNets allow for an explicit initialization scheme such that before optimization, a HARNet yields identical predictions as the respective baseline HAR model. Particularly when considering the QLIKE error as a loss function, we find that this approach significantly stabilizes the optimization of HARNets. We evaluate the performance of HARNets with respect to three different stock market indexes. Based on this evaluation, we formulate clear guidelines for the optimization of HARNets and show that HARNets can substantially improve upon the forecasting accuracy of their respective HAR baseline models. In a qualitative analysis of the filter weights learnt by a HARNet, we report clear patterns regarding the predictive power of past information. Among information from the previous week, yesterday and the day before, yesterday's volatility makes by far the most contribution to today's realized volatility forecast. Moroever, within the previous month, the importance of single weeks diminishes almost linearly when moving further into the past.

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