cs.AI updates on arXiv.org 08月15日
On Spectral Properties of Gradient-based Explanation Methods
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文章从概率和频谱角度分析深度网络解释方法,揭示梯度使用中的频谱偏差,提出改进方法,并通过量化评估验证理论结果。

arXiv:2508.10595v1 Announce Type: cross Abstract: Understanding the behavior of deep networks is crucial to increase our confidence in their results. Despite an extensive body of work for explaining their predictions, researchers have faced reliability issues, which can be attributed to insufficient formalism. In our research, we adopt novel probabilistic and spectral perspectives to formally analyze explanation methods. Our study reveals a pervasive spectral bias stemming from the use of gradient, and sheds light on some common design choices that have been discovered experimentally, in particular, the use of squared gradient and input perturbation. We further characterize how the choice of perturbation hyperparameters in explanation methods, such as SmoothGrad, can lead to inconsistent explanations and introduce two remedies based on our proposed formalism: (i) a mechanism to determine a standard perturbation scale, and (ii) an aggregation method which we call SpectralLens. Finally, we substantiate our theoretical results through quantitative evaluations.

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深度网络 解释方法 频谱分析 优化
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