Litcius/Paper detail

Explainable Online Validation of Machine Learning Models for Practical Applications

Wolfgang Fuhl, Yao Rong, Thomas Motz, Michael Scheidt, Andreas Hartel, Andreas Koch, Enkelejda Kasneci

202129 citationsDOIOpen Access PDF

Abstract

We present a reformulation of the regression and classification, which aims to validate the result of a machine learning algorithm. Our reformulation simplifies the original problem and validates the result of the machine learning algorithm using the training data. Since the validation of machine learning algorithms must always be explainable, we perform our experiments with the kNN algorithm as well as with an algorithm based on conditional probabilities, which is proposed in this work. For the evaluation of our approach, three publicly available data sets were used and three classification and two regression problems were evaluated. The presented algorithm based on conditional probabilities is also online capable and requires only a fraction of memory compared to the kNN algorithm.

Topics & Concepts

Computer scienceMachine learningArtificial intelligenceFraction (chemistry)Online machine learningRegressionData miningAlgorithmActive learning (machine learning)MathematicsStatisticsChemistryOrganic chemistryMachine Learning and Data ClassificationExplainable Artificial Intelligence (XAI)Imbalanced Data Classification Techniques