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Autori principali: Werner, Thorben, Schmidt-Thieme, Lars
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2501.01248
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author Werner, Thorben
Schmidt-Thieme, Lars
author_facet Werner, Thorben
Schmidt-Thieme, Lars
contents Active Learning (AL) for regression has been systematically under-researched due to the increased difficulty of measuring uncertainty in regression models. Since normalizing flows offer a full predictive distribution instead of a point forecast, they facilitate direct usage of known heuristics for AL like Entropy or Least-Confident sampling. However, we show that most of these heuristics do not work well for normalizing flows in pool-based AL and we need more sophisticated algorithms to distinguish between aleatoric and epistemic uncertainty. In this work we propose BALSA, an adaptation of the BALD algorithm, tailored for regression with normalizing flows. With this work we extend current research on uncertainty quantification with normalizing flows \cite{berry2023normalizing, berry2023escaping} to real world data and pool-based AL with multiple acquisition functions and query sizes. We report SOTA results for BALSA across 4 different datasets and 2 different architectures.
format Preprint
id arxiv_https___arxiv_org_abs_2501_01248
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Bayesian Active Learning By Distribution Disagreement
Werner, Thorben
Schmidt-Thieme, Lars
Machine Learning
Active Learning (AL) for regression has been systematically under-researched due to the increased difficulty of measuring uncertainty in regression models. Since normalizing flows offer a full predictive distribution instead of a point forecast, they facilitate direct usage of known heuristics for AL like Entropy or Least-Confident sampling. However, we show that most of these heuristics do not work well for normalizing flows in pool-based AL and we need more sophisticated algorithms to distinguish between aleatoric and epistemic uncertainty. In this work we propose BALSA, an adaptation of the BALD algorithm, tailored for regression with normalizing flows. With this work we extend current research on uncertainty quantification with normalizing flows \cite{berry2023normalizing, berry2023escaping} to real world data and pool-based AL with multiple acquisition functions and query sizes. We report SOTA results for BALSA across 4 different datasets and 2 different architectures.
title Bayesian Active Learning By Distribution Disagreement
topic Machine Learning
url https://arxiv.org/abs/2501.01248