2024
DOI: 10.1007/s10115-024-02108-4
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Robustness verification of k-nearest neighbors by abstract interpretation

Nicolò Fassina,
Francesco Ranzato,
Marco Zanella

Abstract: We study the certification of stability properties, such as robustness and individual fairness, of the k-nearest neighbor algorithm (kNN). Our approach leverages abstract interpretation, a well-established program analysis technique that has been proven successful in verifying several machine learning algorithms, notably, neural networks, decision trees, and support vector machines. In this work, we put forward an abstract interpretation-based framework for designing a sound approximate version of the kNN algo… Show more

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