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Classification Metrics for Image Explanations: Towards Building Reliable XAI-Evaluations (2406.05068v1)

Published 7 Jun 2024 in cs.CV, cs.AI, and cs.HC

Abstract: Decision processes of computer vision models - especially deep neural networks - are opaque in nature, meaning that these decisions cannot be understood by humans. Thus, over the last years, many methods to provide human-understandable explanations have been proposed. For image classification, the most common group are saliency methods, which provide (super-)pixelwise feature attribution scores for input images. But their evaluation still poses a problem, as their results cannot be simply compared to the unknown ground truth. To overcome this, a slew of different proxy metrics have been defined, which are - as the explainability methods themselves - often built on intuition and thus, are possibly unreliable. In this paper, new evaluation metrics for saliency methods are developed and common saliency methods are benchmarked on ImageNet. In addition, a scheme for reliability evaluation of such metrics is proposed that is based on concepts from psychometric testing. The used code can be found at https://github.com/lelo204/ClassificationMetricsForImageExplanations .

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Authors (3)
  1. Benjamin Fresz (5 papers)
  2. Lena Lörcher (1 paper)
  3. Marco Huber (25 papers)
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