CVMar 16

Sparse but not Simpler: A Multi-Level Interpretability Analysis of Vision Transformers

arXiv:2603.1591937.6h-index: 1
AI Analysis

This addresses the problem of interpretability in AI for researchers, showing that structural sparsity alone is insufficient for more interpretable vision models, which is an incremental finding.

The study investigated whether weight sparsity in Vision Transformers leads to improved interpretability, finding that while sparse models have 2.5x fewer circuit edges, they show no systematic gains in interpretability metrics like neuron selectivity or attribution faithfulness.

Sparse neural networks are often hypothesized to be more interpretable than dense models, motivated by findings that weight sparsity can produce compact circuits in language models. However, it remains unclear whether structural sparsity itself leads to improved semantic interpretability. In this work, we systematically evaluate the relationship between weight sparsity and interpretability in Vision Transformers using DeiT-III B/16 models pruned with Wanda. To assess interpretability comprehensively, we introduce \textbf{IMPACT}, a multi-level framework that evaluates interpretability across four complementary levels: neurons, layer representations, task circuits, and model-level attribution. Layer representations are analyzed using BatchTopK sparse autoencoders, circuits are extracted via learnable node masking, and explanations are evaluated with transformer attribution using insertion and deletion metrics. Our results reveal a clear structural effect but limited interpretability gains. Sparse models produce circuits with approximately $2.5\times$ fewer edges than dense models, yet the fraction of active nodes remains similar or higher, indicating that pruning redistributes computation rather than isolating simpler functional modules. Consistent with this observation, sparse models show no systematic improvements in neuron-level selectivity, SAE feature interpretability, or attribution faithfulness. These findings suggest that structural sparsity alone does not reliably yield more interpretable vision models, highlighting the importance of evaluation frameworks that assess interpretability beyond circuit compactness.

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