cs.AI updates on arXiv.org 07月08日 13:53
Towards Better Visualizing the Decision Basis of Networks via Unfold and Conquer Attribution Guidance
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本文提出UCAG框架,通过空间审查输入特征与模型置信度,增强深度神经网络决策的可解释性,并通过多种评估指标验证其性能优于现有方法。

arXiv:2312.14201v2 Announce Type: replace-cross Abstract: Revealing the transparency of Deep Neural Networks (DNNs) has been widely studied to describe the decision mechanisms of network inner structures. In this paper, we propose a novel post-hoc framework, Unfold and Conquer Attribution Guidance (UCAG), which enhances the explainability of the network decision by spatially scrutinizing the input features with respect to the model confidence. Addressing the phenomenon of missing detailed descriptions, UCAG sequentially complies with the confidence of slices of the image, leading to providing an abundant and clear interpretation. Therefore, it is possible to enhance the representation ability of explanation by preserving the detailed descriptions of assistant input features, which are commonly overwhelmed by the main meaningful regions. We conduct numerous evaluations to validate the performance in several metrics: i) deletion and insertion, ii) (energy-based) pointing games, and iii) positive and negative density maps. Experimental results, including qualitative comparisons, demonstrate that our method outperforms the existing methods with the nature of clear and detailed explanations and applicability.

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深度神经网络 可解释性 UCAG框架 模型置信度 性能评估
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