ShapBPT documentationΒΆ

ShapBPT is a Python package for generating data-aware image feature attributions using Owen values over Binary Partition Trees (BPTs). ShapBPT is model-agnostic and operates through a masking function interface, making it applicable to a wide range of black-box models. ShapBPT extends well known method Shap. If you use ShapBPT in your research and enjoying, please consider citing our AAAI-26 paper:

@inproceedings{rashid2026shapbpt,
title={{ShapBPT: Image Feature Attributions Using Data-Aware Binary Partition Trees}},
author={Rashid, Muhammad and Amparore, Elvio G and Ferrari, Enrico and Verda, Damiano},
booktitle={Proceedings of the AAAI Conference on Artificial Intelligence},
volume={40},
number={30},
pages={25099--25107},
year={2026},
url={https://doi.org/10.1609/aaai.v40i30.39699}
}

HOW IT WORKS and Comparison with Shap-AxisAligned

_images/docs_files-header_image.png

πŸš€ Key FeaturesΒΆ

  • Data-aware hierarchical explanation using Binary Partition Trees (BPT)

  • Owen-value based recursive attribution

  • Model-agnostic design via masking functions

  • Axis-aligned baseline (AA) for comparison

  • Supports real-world pipelines (ImageNet, detection, anomaly detection)

⚑ Quick example¢

import shap_bpt

explainer = shap_bpt.Explainer(fm, image, num_explained_classes=4)

shap_values = explainer.explain_instance(
    max_evals=1000,
    method="BPT"
)

shap_bpt.plot_owen_values(explainer, shap_values, class_names)

πŸ“¦ InstallationΒΆ

pip install shap-bpt

Why ShapBPT? Key AdvantagesΒΆ

ShapBPT extends hierarchical Shapley-value explanations by introducing a data-aware partitioning of the input space tailored for images.

Key advantages:

  • Model-agnostic

    ShapBPT only requires a masking function and does not depend on access to model internals, making it applicable to arbitrary black-box models.

  • Data-aware explanation structure

    Instead of relying on axis-aligned grids, ShapBPT builds a Binary Partition Tree (BPT) from the image itself, producing explanations that better align with meaningful visual regions and object boundaries.

  • Efficient Owen-value approximation

    The hierarchical structure enables a recursive Owen-value formulation, significantly reducing the number of model evaluations compared to flat Shapley computation.

  • Interpretable multi-scale explanations

    Explanations are naturally organized across multiple scales, allowing users to inspect both coarse and fine-grained contributions.

  • Drop-in baseline comparison

    By setting method="AA", ShapBPT reproduces axis-aligned hierarchical partitioning, enabling direct comparison with grid-based SHAP methods within the same interface.

πŸ“š Documentation OverviewΒΆ

Development