Quantile Convolutional Neural Networks for Value at Risk Forecasting
2019-08-21Unverified0· sign in to hype
Gábor Petneházi
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ReproduceAbstract
This article presents a new method for forecasting Value at Risk. Convolutional neural networks can do time series forecasting, since they can learn local patterns in time. A simple modification enables them to forecast not the mean, but arbitrary quantiles of the distribution, and thus allows them to be applied to VaR-forecasting. The proposed model can learn from the price history of different assets, and it seems to produce fairly accurate forecasts.