UbiQVision: Quantifying Uncertainty in XAI for Image Recognition
Pith reviewed 2026-05-16 20:07 UTC · model grok-4.3
The pith
Dirichlet posterior sampling and Dempster-Shafer theory can quantify instability in SHAP explanations for medical image classifiers.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
The central discovery is a framework called UbiQVision that uses Dirichlet posterior sampling to capture epistemic and aleatoric uncertainty in SHAP values, then applies Dempster-Shafer theory to compute belief maps, plausibility maps, and fusion maps, providing a quantitative measure of explanation uncertainty without requiring ground-truth labels.
What carries the argument
Dirichlet posterior sampling fused with Dempster-Shafer belief and plausibility functions to produce uncertainty maps from SHAP explanations.
If this is right
- Clinicians can identify which parts of a SHAP explanation are trustworthy in noisy medical scans.
- The method allows statistical comparison of uncertainty levels across different imaging modalities.
- It provides a way to fuse multiple uncertain explanations into a single reliable visualization.
- Models with high uncertainty in explanations can be flagged for further review before clinical use.
Where Pith is reading between the lines
- This could extend to other XAI methods beyond SHAP, such as LIME, by applying the same sampling and fusion process.
- In non-medical domains like autonomous driving, it might help quantify trust in visual explanations under sensor noise.
- Future work could test if these uncertainty scores correlate with actual model error rates on held-out test sets.
Load-bearing premise
The assumption that Dirichlet sampling combined with Dempster-Shafer theory yields a faithful measure of SHAP instability without adding new biases or needing separate validation data.
What would settle it
Run the framework on a dataset where SHAP explanations are known to be stable, such as synthetic images with no noise, and check if the uncertainty scores remain near zero.
Figures
read the original abstract
Recent advances in deep learning have led to its widespread adoption across diverse domains, including medical imaging. This progress is driven by increasingly sophisticated model architectures, such as ResNets, Vision Transformers, and Hybrid Convolutional Neural Networks, that offer enhanced performance at the cost of greater complexity. This complexity often compromises model explainability and interpretability. SHAP has emerged as a prominent method for providing interpretable visualizations that aid domain experts in understanding model predictions. However, SHAP explanations can be unstable and unreliable in the presence of epistemic and aleatoric uncertainty. In this study, we address this challenge by using Dirichlet posterior sampling and Dempster-Shafer theory to quantify the uncertainty that arises from these unstable explanations in medical imaging applications. The framework uses a belief, plausible, and fusion map approach alongside statistical quantitative analysis to produce quantification of uncertainty in SHAP. Furthermore, we evaluated our framework on three medical imaging datasets with varying class distributions, image qualities, and modality types which introduces noise due to varying image resolutions and modality-specific aspect covering the examples from pathology, ophthalmology, and radiology, introducing significant epistemic uncertainty.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The paper introduces UbiQVision, a framework that applies Dirichlet posterior sampling combined with Dempster-Shafer theory to quantify uncertainty arising from unstable SHAP explanations in deep learning models for medical image recognition. It generates belief, plausibility, and fusion maps, performs statistical quantitative analysis, and evaluates the approach on three medical imaging datasets spanning pathology, ophthalmology, and radiology that vary in class distribution, image quality, and modality.
Significance. If the method can be shown to produce maps that reliably track actual SHAP instability, the work would address a practical gap in deploying XAI for high-stakes medical decisions where explanation variance can undermine trust. The use of DST belief/plausibility constructs on top of Dirichlet sampling is a plausible direction, but the current manuscript supplies no equations, implementation details, or validation experiments, so the significance cannot yet be assessed.
major comments (2)
- [Abstract/Methods] Abstract and Methods: the central claim that Dirichlet posterior sampling plus Dempster-Shafer theory yields a faithful quantification of SHAP instability is unsupported because no equations, sampling procedure, or fusion rule are provided; without these it is impossible to determine whether the belief/plausibility maps reflect epistemic instability in the explanations or merely modeling artifacts.
- [Results] Results/Evaluation: no empirical check is reported that the produced belief or fusion maps correlate with observable SHAP variance (e.g., across random seeds, input perturbations, or repeated explanations on identical images), leaving open the possibility that the maps capture aleatoric noise rather than the targeted explanation instability.
minor comments (2)
- [Abstract] The abstract refers to 'statistical quantitative analysis' without naming the specific metrics, confidence intervals, or hypothesis tests employed.
- [Experiments] Dataset descriptions mention 'varying image resolutions and modality-specific aspect' but do not report exact image sizes, preprocessing steps, or how these factors were controlled in the uncertainty quantification.
Simulated Author's Rebuttal
We thank the referee for the detailed and constructive review. We address each major comment below and will revise the manuscript to incorporate the suggested improvements.
read point-by-point responses
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Referee: [Abstract/Methods] Abstract and Methods: the central claim that Dirichlet posterior sampling plus Dempster-Shafer theory yields a faithful quantification of SHAP instability is unsupported because no equations, sampling procedure, or fusion rule are provided; without these it is impossible to determine whether the belief/plausibility maps reflect epistemic instability in the explanations or merely modeling artifacts.
Authors: We agree that the current manuscript lacks explicit equations and procedural details for the Dirichlet posterior sampling and the Dempster-Shafer fusion rules. This omission makes it difficult for readers to fully assess the method. In the revised version, we will expand the Methods section to include the full mathematical formulation: the Dirichlet distribution used for posterior sampling of explanation weights, the Monte Carlo sampling procedure to generate an ensemble of SHAP maps, and the specific combination rules for computing belief and plausibility from the sampled explanations. These additions will demonstrate that the resulting maps specifically capture the variance due to SHAP instability. revision: yes
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Referee: [Results] Results/Evaluation: no empirical check is reported that the produced belief or fusion maps correlate with observable SHAP variance (e.g., across random seeds, input perturbations, or repeated explanations on identical images), leaving open the possibility that the maps capture aleatoric noise rather than the targeted explanation instability.
Authors: We acknowledge the importance of empirical validation to confirm that the uncertainty maps track SHAP instability rather than other sources of noise. The current evaluation focuses on qualitative and statistical analysis across datasets, but does not include direct correlation studies. We will add new experiments in the revised manuscript: for a subset of images, we will generate multiple SHAP explanations under controlled variations (different seeds, slight input perturbations), compute the variance in the explanation values, and show that the belief and fusion maps have high correlation with these variance measures, supported by quantitative metrics such as Pearson correlation coefficients. revision: yes
Circularity Check
No circularity detected in the derivation chain
full rationale
The abstract describes a framework that applies Dirichlet posterior sampling and Dempster-Shafer theory to produce belief, plausibility, and fusion maps for quantifying SHAP instability. No equations, parameter-fitting steps, or self-citations are shown that would reduce any claimed output to an input by construction. The approach introduces new constructs (belief/plausibility maps plus statistical analysis) rather than re-labeling fitted quantities or importing uniqueness results from prior self-work. Without load-bearing reductions visible in the provided text, the derivation chain is self-contained.
Axiom & Free-Parameter Ledger
Lean theorems connected to this paper
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IndisputableMonolith/Cost/FunctionalEquation.leanwashburn_uniqueness_aczel unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
we address this challenge by using Dirichlet posterior sampling and Dempster-Shafer theory to quantify the uncertainty that arises from these unstable explanations... belief, plausible, and fusion map approach
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IndisputableMonolith/Foundation/AlphaCoordinateFixation.leanalpha_pin_under_high_calibration unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
The framework uses a belief, plausible, and fusion map approach alongside statistical quantitative analysis to produce quantification of uncertainty in SHAP
What do these tags mean?
- matches
- The paper's claim is directly supported by a theorem in the formal canon.
- supports
- The theorem supports part of the paper's argument, but the paper may add assumptions or extra steps.
- extends
- The paper goes beyond the formal theorem; the theorem is a base layer rather than the whole result.
- uses
- The paper appears to rely on the theorem as machinery.
- contradicts
- The paper's claim conflicts with a theorem or certificate in the canon.
- unclear
- Pith found a possible connection, but the passage is too broad, indirect, or ambiguous to say the theorem truly supports the claim.
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