Interpretable explanations of black boxes by meaningful perturbation

VAVedaldi, AFRFong, RC

University of Oxford

Abstract

As machine learning algorithms are increasingly applied to high impact yet high risk tasks, such as medical diagnosis or autonomous driving, it is critical that researchers can explain how such algorithms arrived at their predictions. In recent years, a number of image saliency methods have been developed to summarize where highly complex neural networks “look” in an image for evidence for their predictions. However, these techniques are limited by their heuristic nature and architectural constraints. In this paper, we make two main contributions: First, we propose a general framework for learning different kinds of explanations for any black box algorithm. Second, we specialise the framework to find the part…

Citation impact

1,352
total citations
FWCI
Percentile
References
29
Citations per year

Authors

2
  • VA
    Vedaldi, ACorresponding

    University of Oxford

  • FR
    Fong, RC

    University of Oxford

Topics & keywords

Keywords
  • Computer science
  • Artificial intelligence
  • Machine learning
  • Heuristic
  • Classifier (UML)
  • Deep neural networks
  • Image (mathematics)
  • Contextual image classification
UN Sustainable Development Goals
  • Peace, Justice and strong institutions
No related works found for this paper.