English

Distribution Preserving Multiple Hypotheses Prediction for Uncertainty Modeling

Machine Learning 2021-10-07 v1

Abstract

Many supervised machine learning tasks, such as future state prediction in dynamical systems, require precise modeling of a forecast's uncertainty. The Multiple Hypotheses Prediction (MHP) approach addresses this problem by providing several hypotheses that represent possible outcomes. Unfortunately, with the common l2l_2 loss function, these hypotheses do not preserve the data distribution's characteristics. We propose an alternative loss for distribution preserving MHP and review relevant theorems supporting our claims. Furthermore, we empirically show that our approach yields more representative hypotheses on a synthetic and a real-world motion prediction data set. The outputs of the proposed method can directly be used in sampling-based Monte-Carlo methods.

Keywords

Cite

@article{arxiv.2110.02858,
  title  = {Distribution Preserving Multiple Hypotheses Prediction for Uncertainty Modeling},
  author = {Tobias Leemann and Moritz Sackmann and Jörn Thielecke and Ulrich Hofmann},
  journal= {arXiv preprint arXiv:2110.02858},
  year   = {2021}
}

Comments

Presented at the European Symposium of Artificial Neural Networks (ESANN) 2021

R2 v1 2026-06-24T06:40:30.991Z