Robust statistical comparison of random variables with locally varying scale of measurement

C Jansen, G Schollmeyer, H Blocher… - Uncertainty in …, 2023 - proceedings.mlr.press
Abstract Spaces with locally varying scale of measurement, like multidimensional structures
with differently scaled dimensions, are pretty common in statistics and machine learning …

In all likelihoods: Robust selection of pseudo-labeled data

J Rodemann, C Jansen… - International …, 2023 - proceedings.mlr.press
Self-training is a simple yet effective method within semi-supervised learning. Self-training's
rationale is to iteratively enhance training data by adding pseudo-labeled data. Its …

Semi-supervised learning guided by the generalized Bayes rule under soft revision

S Dietrich, J Rodemann, C Jansen - … on Soft Methods in Probability and …, 2024 - Springer
We provide a theoretical and computational investigation of the Gamma-Maximin method
with soft revision, which was recently proposed as a robust criterion for pseudo-label …

Statistical Multicriteria Benchmarking via the GSD-Front

C Jansen, G Schollmeyer, J Rodemann… - arXiv preprint arXiv …, 2024 - arxiv.org
Given the vast number of classifiers that have been (and continue to be) proposed, reliable
methods for comparing them are becoming increasingly important. The desire for reliability …

Games of incomplete information: A framework based on belief functions

H Fargier, É Martin-Dorel… - Symbolic and Quantitative …, 2021 - Springer
This paper proposes a model for incomplete games where the knowledge of the players is
represented by a Dempster-Shafer belief function. Beyond an extension of the classical …

Semi-supervised Learning Guided by the Generalized Bayes Rule Under

S Dietrich, J Rodemann, C Jansen - Combining, Modelling and …, 2024 - books.google.com
We provide a theoretical and computational investigation of the Gamma-Maximin method
with soft revision, which was recently proposed as a robust criterion for pseudo-label …