AI Article Synopsis

  • Spatiotemporal problems are common and critical across various research areas, yet traditional deep learning methods mainly focus on predicting average outputs rather than the full range of possible outcomes.
  • We introduce a novel multioutput multiquantile deep learning approach that models multiple conditional quantiles alongside the conditional expectation, offering a more comprehensive view of predictive density in spatiotemporal data.
  • Our empirical results using large transportation datasets show that this method not only avoids issues like quantile crossings but also enhances predictions and captures variability with minimal additional computational cost.

Article Abstract

Spatiotemporal problems are ubiquitous and of vital importance in many research fields. Despite the potential already demonstrated by deep learning methods in modeling spatiotemporal data, typical approaches tend to focus solely on conditional expectations of the output variables being modeled. In this article, we propose a multioutput multiquantile deep learning approach for jointly modeling several conditional quantiles together with the conditional expectation as a way to provide a more complete "picture" of the predictive density in spatiotemporal problems. Using two large-scale data sets from the transportation domain, we empirically demonstrate that, by approaching the quantile regression problem from a multitask learning perspective, it is possible to solve the embarrassing quantile crossings problem while simultaneously significantly outperforming state-of-the-art quantile regression methods. Moreover, we show that jointly modeling the mean and several conditional quantiles not only provides a rich description about the predictive density that can capture heteroscedastic properties at a neglectable computational overhead but also leads to improved predictions of the conditional expectation due to the extra information and the regularization effect induced by the added quantiles.

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Source
http://dx.doi.org/10.1109/TNNLS.2020.2966745DOI Listing

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