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How Inverse Conditional Flows Can Serve as a Substitute for Distributional Regression

  • Lucas Kook
  • , Chris Kolb
  • , Philipp Schiele
  • , Daniel Dold
  • , Marcel Arpogaus
  • , Cornelius Fritz
  • , Philipp F. M. Baumann
  • , Philipp Kopper
  • , Tobias Pielok
  • , Emilio Dorigatti
  • , David Rügamer

Publication: Chapter in book/Conference proceedingContribution to conference proceedings

Abstract

Neural network representations of simple models, such as linear regression, are being studied increasingly to better understand the underlying principles of deep learning algorithms. However, neural representations of distributional regression models, such as the Cox model, have received little attention so far. We close this gap by proposing a framework for distributional regression using inverse flow transformations (DRIFT), which includes neural representations of the aforementioned models. We empirically demonstrate that the neural representations of models in DRIFT can serve as a substitute for their classical statistical counterparts in several applications involving continuous, ordered, time-series, and survival outcomes. We confirm that models in DRIFT empirically match the performance of several statistical methods in terms of estimation of partial effects, prediction, and aleatoric uncertainty quantification. DRIFT covers both interpretable statistical models and flexible neural networks opening up new avenues in both statistical modeling and deep learning.
Original languageEnglish
Title of host publicationThe 40th Conference on Uncertainty in Artificial Intelligence (UAI 2024)
Subtitle of host publicationBarcelona, 15-19 July 2024
EditorsN. Kiyavash, J.M. Mooij
PublisherML Research Press
Pages2029-2046
Publication statusPublished - 26 Apr 2024

Publication series

SeriesProceedings of Machine Learning Research
Volume244

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