Open Access
Open access
Signals, volume 2, issue 3, pages 559-569

Mixture Density Conditional Generative Adversarial Network Models (MD-CGAN)

Publication typeJournal Article
Publication date2021-09-01
Journal: Signals
SJR
CiteScore3.2
Impact factor
ISSN26246120
Abstract

Generative Adversarial Networks (GANs) have gained significant attention in recent years, with impressive applications highlighted in computer vision, in particular. Compared to such examples, however, there have been more limited applications of GANs to time series modeling, including forecasting. In this work, we present the Mixture Density Conditional Generative Adversarial Model (MD-CGAN), with a focus on time series forecasting. We show that our model is capable of estimating a probabilistic posterior distribution over forecasts and that, in comparison to a set of benchmark methods, the MD-CGAN model performs well, particularly in situations where noise is a significant component of the observed time series. Further, by using a Gaussian mixture model as the output distribution, MD-CGAN offers posterior predictions that are non-Gaussian.

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