Certifiably Robust Interpretation in Deep Learning

ICLR 2020 Alexander LevineSahil SinglaSoheil Feizi

Deep learning interpretation is essential to explain the reasoning behind model predictions. Understanding the robustness of interpretation methods is important especially in sensitive domains such as medical applications since interpretation results are often used in downstream tasks... (read more)

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