Wasserstein dropout


연구 분야: Databases



학회: Machine Learning


초록

Despite of its importance for safe machine learning, uncertainty quantification for neural networks is far from being solved. State-of-the-art approaches to estimate neural uncertainties are often hybrid, combining parametric models with explicit or implicit (dropout-based) ensembling. We take another pathway and propose a novel approach to uncertainty quantification for regression tasks, Wasserstein dropout, that is purely non-parametric. Technically, it captures aleatoric uncertainty by means of dropout-based sub-network distributions. This is accomplished by a new objective which minimizes the Wasserstein distance between the label distribution and the model distribution. An extensive empirical analysis shows that Wasserstein dropout outperforms state-of-the-art methods, on vanilla test data as well as under distributional shift in terms of producing more accurate and stable uncertainty estimates.


Author Profile
Joachim Sicking

Fraunhofer IAIS Schloss Birlinghoven 1 53757 Sankt Augustin Germany

Germany
Author Profile
Maram Akila

Fraunhofer IAIS Schloss Birlinghoven 1 53757 Sankt Augustin Germany

Germany
Author Profile
Maximilian Pintz

Fraunhofer IAIS Schloss Birlinghoven 1 53757 Sankt Augustin Germany

Germany

📄 논문 정보

발행 연도 2022년
인용수 0
출판 국가 Germany
사이트 Springer
좋아요 수 0

연관 논문 목록 (27건)