SEIS: Subspace-based Equivariance and Invariance Scores for Neural Representations
- URL: http://arxiv.org/abs/2602.04054v1
- Date: Tue, 03 Feb 2026 22:38:08 GMT
- Title: SEIS: Subspace-based Equivariance and Invariance Scores for Neural Representations
- Authors: Huahua Lin, Katayoun Farrahi, Xiaohao Cai,
- Abstract summary: We introduce SEIS, a subspace metric for analyzing layer-wise feature representations under geometric transformations.<n>Synthetic validation confirms that SEIS correctly recovers known transformations.<n>We show that multi-task learning induces synergistic gains in both properties at the shared encoder.
- Score: 1.2431372110088466
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Understanding how neural representations respond to geometric transformations is essential for evaluating whether learned features preserve meaningful spatial structure. Existing approaches primarily assess robustness by comparing model outputs under transformed inputs, offering limited insight into how geometric information is organized within internal representations and failing to distinguish between information loss and re-encoding. In this work, we introduce SEIS (Subspace-based Equivariance and Invariance Scores), a subspace metric for analyzing layer-wise feature representations under geometric transformations, disentangling equivariance from invariance without requiring labels or explicit knowledge of the transformation. Synthetic validation confirms that SEIS correctly recovers known transformations. Applied to trained classification networks, SEIS reveals a transition from equivariance in early layers to invariance in deeper layers, and that data augmentation increases invariance while preserving equivariance. We further show that multi-task learning induces synergistic gains in both properties at the shared encoder, and skip connections restore equivariance lost during decoding.
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