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Evaluating Layer-wise Relevance Propagation Explainability Maps for Artificial Neural Networks

机译:评估人工神经网络的层面相关性传播释放映射

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Layer-wise relevance propagation (LRP) heatmaps aim to provide graphical explanation for decisions of a classifier. This could be of great benefit to scientists for trusting complex black-box models and getting insights from their data. The LRP heatmaps tested on benchmark datasets are reported to correlate significantly with interpretable image features. In this work, we investigate these claims and propose to refine them.
机译:层面相关性传播(LRP)热量旨在为分类器的决策提供图形解释。这对科学家来说,这对于信任复杂的黑匣子模型来说,这可能是一个很大的好处,并从他们的数据中获得见解。据报道,在基准数据集上测试的LRP热量表以可解释的图像特征显着相关。在这项工作中,我们调查这些索赔并建议改进它们。

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