2022
DOI: 10.48550/arxiv.2202.07244
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Explaining Reject Options of Learning Vector Quantization Classifiers

Abstract: While machine learning models are usually assumed to always output a prediction, there also exist extensions in the form of reject options which allow the model to reject inputs where only a prediction with an unacceptably low certainty would be possible. With the ongoing rise of eXplainable AI, a lot of methods for explaining model predictions have been developed. However, understanding why a given input was rejected, instead of being classified by the model, is also of interest. Surprisingly, explanations of… Show more

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