Multi-Horizon Time Series Forecasting of non-parametric CDFs with Deep Lattice Networks
Niklas Erdmann, Lars Bentsen, Roy Stenbro, Heine Nygard Riise, Narada Dilp Warakagoda, Paal E. Engelstad

TL;DR
This paper introduces a novel deep lattice network approach for multi-horizon probabilistic time series forecasting of nonparametric CDFs, improving accuracy and monotonicity constraints over existing methods.
Contribution
It adapts deep lattice networks for implicit quantile regression in time series, enabling nonparametric CDF forecasting with monotonic constraints and superior performance.
Findings
Performs as well or better than unconstrained models
Outperforms scalable monotonic neural networks
Effective in solar irradiance forecasting
Abstract
Probabilistic forecasting is not only a way to add more information to a prediction of the future, but it also builds on weaknesses in point prediction. Sudden changes in a time series can still be captured by a cumulative distribution function (CDF), while a point prediction is likely to miss it entirely. The modeling of CDFs within forecasts has historically been limited to parametric approaches, but due to recent advances, this no longer has to be the case. We aim to advance the fields of probabilistic forecasting and monotonic networks by connecting them and propose an approach that permits the forecasting of implicit, complete, and nonparametric CDFs. For this purpose, we propose an adaptation to deep lattice networks (DLN) for monotonically constrained simultaneous/implicit quantile regression in time series forecasting. Quantile regression usually produces quantile crossovers,…
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Taxonomy
TopicsForecasting Techniques and Applications · Stock Market Forecasting Methods · Traffic Prediction and Management Techniques
