Deep Huber quantile regression networks.

Journal: Neural networks : the official journal of the International Neural Network Society
PMID:

Abstract

Typical machine learning regression applications aim to report the mean or the median of the predictive probability distribution, via training with a squared or an absolute error scoring function. The importance of issuing predictions of more functionals of the predictive probability distribution (quantiles and expectiles) has been recognized as a means to quantify the uncertainty of the prediction. In deep learning (DL) applications, that is possible through quantile and expectile regression neural networks (QRNN and ERNN respectively). Here we introduce deep Huber quantile regression networks (DHQRN) that nest QRNN and ERNN as edge cases. DHQRN can predict Huber quantiles, which are more general functionals in the sense that they nest quantiles and expectiles as limiting cases. The main idea is to train a DL algorithm with the Huber quantile scoring function, which is consistent for the Huber quantile functional. As a proof of concept, DHQRN are applied to predict house prices in Melbourne, Australia and Boston, United States (US). In this context, predictive performances of three DL architectures are discussed along with evidential interpretation of results from two economic case studies. Additional simulation experiments and applications to real-world case studies using open datasets demonstrate a satisfactory absolute performance of DHQRN.

Authors

  • Hristos Tyralis
    Department of Topography, School of Rural, Surveying and Geoinformatics Engineering, National Technical University of Athens, Iroon Polytechniou 5, Zografou 157 80, Greece; Construction Agency, Hellenic Air Force, Mesogion Avenue 227-231, Cholargos 15 561, Greece. Electronic address: hristos@itia.ntua.gr.
  • Georgia Papacharalampous
    Department of Topography, School of Rural, Surveying and Geoinformatics Engineering, National Technical University of Athens, Iroon Polytechniou 5, Zografou 157 80, Greece.
  • Nilay Dogulu
    Hydrology, Water Resources and Cryosphere Branch, World Meteorological Organisation (WMO), Geneva, Switzerland.
  • Kwok P Chun
    Department of Geography and Environmental Management, University of the West of England, Bristol, United Kingdom.