H-SPLID: HSIC-based Saliency Preserving Latent Information Decomposition
We introduce H-SPLID, a novel algorithm for learning salient feature representations through the explicit decomposition of salient and non-salient features into separate spaces. We show that H-SPLID promotes learning low-dimensional, task-relevant features. We prove that the expected prediction deviation under input perturbations is upper-bounded by the dimension of the salient subspace and the Hilbert-Schmidt Independence Criterion (HSIC) between inputs and representations. This establishes a link between robustness and latent representation compression in terms of the dimensionality and information preserved. Empirical evaluations on image classification tasks show that models trained with H-SPLID primarily rely on salient input components, as indicated by reduced sensitivity to perturbations affecting non-salient features, such as image backgrounds. Our code is available at https://github.com/neu-spiral/H-SPLID.
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- Miklautz, Lukas
- Shi, Chengzhi
- Shkabrii, Andrii
- Davarakis, Theodoros-Thirimachos
- Lam, Prudence
- Plant, Claudia
- Dy, Jennifer
- Ioannidis, Stratis
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Category |
Paper in Conference Proceedings or in Workshop Proceedings (Paper) |
Event Title |
The Thirty-Ninth Annual Conference on Neural Information Processing Systems (NeurIPS 2025) |
Divisions |
Data Mining and Machine Learning |
Subjects |
Kuenstliche Intelligenz |
Event Location |
San Diego |
Event Type |
Conference |
Event Dates |
02.12.2025-07.12.2025 |
Date |
2025 |
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