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Main Authors: Dumitrescu, Elena, Peignon, Julien, Thomas, Arthur
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.14049
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author Dumitrescu, Elena
Peignon, Julien
Thomas, Arthur
author_facet Dumitrescu, Elena
Peignon, Julien
Thomas, Arthur
contents This paper proposes a Mixture Density Network specifically designed for forecasting time series that exhibit locally explosive behavior. By incorporating skewed t-distributions as mixture components, our approach offers enhanced flexibility in capturing the skewed, heavy-tailed, and potentially multimodal nature of predictive densities associated with bubble dynamics modeled by mixed causal-noncausal ARMA processes. In addition, we implement an adaptive weighting scheme that emphasizes tail observations during training and hence leads to accurate density estimation in the extreme regions most relevant for financial applications. Equally important, once trained, the MDN produces near-instantaneous density forecasts. Through extensive Monte Carlo simulations and two empirical applications, on the natural gas price and inflation, we show that the proposed MDN-based framework delivers superior forecasting performance relative to existing approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2601_14049
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Tail-Aware Density Forecasting of Locally Explosive Time Series: A Neural Network Approach
Dumitrescu, Elena
Peignon, Julien
Thomas, Arthur
Methodology
This paper proposes a Mixture Density Network specifically designed for forecasting time series that exhibit locally explosive behavior. By incorporating skewed t-distributions as mixture components, our approach offers enhanced flexibility in capturing the skewed, heavy-tailed, and potentially multimodal nature of predictive densities associated with bubble dynamics modeled by mixed causal-noncausal ARMA processes. In addition, we implement an adaptive weighting scheme that emphasizes tail observations during training and hence leads to accurate density estimation in the extreme regions most relevant for financial applications. Equally important, once trained, the MDN produces near-instantaneous density forecasts. Through extensive Monte Carlo simulations and two empirical applications, on the natural gas price and inflation, we show that the proposed MDN-based framework delivers superior forecasting performance relative to existing approaches.
title Tail-Aware Density Forecasting of Locally Explosive Time Series: A Neural Network Approach
topic Methodology
url https://arxiv.org/abs/2601.14049