ShapBPT: Image Feature Attributions Using Data-Aware Binary Partition Trees

Authors

  • Muhammad Rashid University of Turin
  • Elvio G. Amparore University of Turin
  • Enrico Ferrari Rulex Innovations Labs
  • Damiano Verda Rulex Innovations Labs

DOI:

https://doi.org/10.1609/aaai.v40i30.39699

Abstract

Pixel-level feature attributions are an important tool in eXplainable AI for Computer Vision (XCV), providing visual insights into how image features influence model predictions. The Owen formula for hierarchical Shapley values has been widely used to interpret machine learning (ML) models and their learned representations. However, existing hierarchical Shapley approaches do not exploit the multiscale structure of image data, leading to slow convergence and weak alignment with the actual morphological features. Moreover, no prior Shapley method has leveraged data-aware hierarchies for Computer Vision tasks, leaving a gap in model interpretability of structured visual data. To address this, this paper introduces ShapBPT, a novel data-aware XCV method based on the hierarchical Shapley formula. ShapBPT assigns Shapley coefficients to a multiscale hierarchical structure tailored for images, the Binary Partition Tree (BPT). By using this data-aware hierarchical partitioning, ShapBPT ensures that feature attributions align with intrinsic image morphology, effectively prioritizing relevant regions while reducing computational overhead. This advancement connects hierarchical Shapley methods with image data, providing a more efficient and semantically meaningful approach to visual interpretability. Experimental results confirm ShapBPT’s effectiveness, demonstrating superior alignment with image structures and improved efficiency over existing XCV methods, and a 20-subject user study confirming that ShapBPT explanations are preferred by humans.

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Published

2026-03-14

How to Cite

Rashid, M., Amparore, E. G., Ferrari, E., & Verda, D. (2026). ShapBPT: Image Feature Attributions Using Data-Aware Binary Partition Trees. Proceedings of the AAAI Conference on Artificial Intelligence, 40(30), 25099–25107. https://doi.org/10.1609/aaai.v40i30.39699

Issue

Section

AAAI Technical Track on Machine Learning VII