AI RESEARCH
Attribution via Distributional Paths for Information Revelation
arXiv CS.LG
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ArXi:2606.03885v1 Announce Type: new Feature attribution methods explain predictions by assigning importance scores to input features. Path-based methods such as Integrated Gradients are especially appealing because they satisfy \textit{completeness}: attributions sum to the change in model output between a reference state and the input. Yet most path methods define this trajectory in input space, explaining a model through pointwise perturbed inputs along a chosen path.