Machine Learning – the results are not the only thing that matters! What about security, explainability and fairness?

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Details

DOI: 10.1007/978-3-030-50423-6_46
Publication type: Conference paper
Conference: ICSS 2020: International Conference on Computational Science
Location: Amsterdam, Netherlands
Online publication date: 2020-06-15

Abstract

Recent advances in machine learning (ML) and the surge in computational power have opened the way to the proliferation of ML and Artificial Intelligence (AI) in many domains and applications. Still, apart from achieving good accuracy and results, there are many challenges that need to be discussed in order to effectively apply ML algorithms in critical applications for the good of societies. The aspects that can hinder practical and trustful ML and AI are: lack of security of ML algorithms as well as lack of fairness and explainability. In this paper we discuss those aspects and provide current state of the art analysis of the relevant works in the mentioned domains.

Authors

  • Michał Choraś
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    UTP University of Science and Technology
    Bydgoszcz, Poland
  • Marek Pawlicki
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    UTP University of Science and Technology
    Bydgoszcz, Poland
  • Damian Puchalski
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    ITTI Sp. z o.o.
    Poznań, Poland
  • Rafał Kozik
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    UTP University of Science and Technology
    Bydgoszcz, Poland