HARNet: A Convolutional Neural Network for Realized Volatility Forecasting
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 Heterogeneou...
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Zusammenfassung: | 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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DOI: | 10.48550/arxiv.2205.07719 |