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  4. pRSL: Interpretable Multi-label Stacking by Learning Probabilistic Rules
 
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2021
Conference Paper
Title

pRSL: Interpretable Multi-label Stacking by Learning Probabilistic Rules

Abstract
A key task in multi-label classification is modeling the structure between the involved classes. Modeling this structure by probabilistic and interpretable means enables application in a broad variety of tasks such as zero-shot learning or learning from incomplete data. In this paper, we present the probabilistic rule stacking learner (pRSL) which uses probabilistic propositional logic rules and belief propagation to combine the predictions of several underlying classifiers. We derive algorithms for exact and approximate inference and learning, and show that pRSL reaches state-of-the-art performance on various benchmark datasets. In the process, we introduce a novel multicategorical generalization of the noisy-or gate. Additionally, were port simulation results on the quality of loopy belief propagation algorithms for approximate inference in bipartite noisy-or networks.
Author(s)
Kirchhof, Michael
TU Dortmund
Schmid, Lena
TU Dortmund
Reining, Christopher  
TU Dortmund
Ten Hompel, Michael  
Fraunhofer-Institut für Materialfluss und Logistik IML  
Pauly, Markus W.
TU Dortmund
Mainwork
Thirty-Seventh Conference on Uncertainty in Artificial Intelligence, UAI 2021. Proceedings  
Conference
Conference on Uncertainty in Artificial Intelligence (UAI) 2021  
Link
Link
Language
English
Fraunhofer-Institut für Materialfluss und Logistik IML  
Keyword(s)
  • pSLR

  • logistics

  • human activity recognition

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