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arxiv: 2507.19321 · v1 · pith:QHTMQANB · submitted 2025-07-25 · cs.CV · cs.AI· cs.LG

SIDE: Sparse Information Disentanglement for Explainable Artificial Intelligence

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classification cs.CV cs.AIcs.LG
keywords sideexplanationsdisentanglementinfodisentinformationmodelsnetworksneural
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Understanding the decisions made by deep neural networks is essential in high-stakes domains such as medical imaging and autonomous driving. Yet, these models often lack transparency, particularly in computer vision. Prototypical-parts-based neural networks have emerged as a promising solution by offering concept-level explanations. However, most are limited to fine-grained classification tasks, with few exceptions such as InfoDisent. InfoDisent extends prototypical models to large-scale datasets like ImageNet, but produces complex explanations. We introduce Sparse Information Disentanglement for Explainability (SIDE), a novel method that improves the interpretability of prototypical parts through a dedicated training and pruning scheme that enforces sparsity. Combined with sigmoid activations in place of softmax, this approach allows SIDE to associate each class with only a small set of relevant prototypes. Extensive experiments show that SIDE matches the accuracy of existing methods while reducing explanation size by over $90\%$, substantially enhancing the understandability of prototype-based explanations.

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Cited by 3 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

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    ProDG uses generative models to create data-free prototypes from model weights for post-hoc explainability of image predictions.

  2. ProDG: Prototypes for Data-Free Generative Post-Hoc Explainability

    cs.CV 2026-05 unverdicted novelty 7.0

    ProDG generates high-fidelity prototypes from model weights alone for data-free post-hoc explainability in prototype-based networks.

  3. APEX: Audio Prototype EXplanations for Classification Tasks

    cs.SD 2026-05 unverdicted novelty 6.0

    APEX generates four types of prototype-based explanations for pre-trained audio classifiers that preserve output invariance and target acoustic properties better than gradient methods applied to spectrograms.