CVAILGMar 12, 2025

Discovering Influential Neuron Path in Vision Transformers

arXiv:2503.09046v26 citationsh-index: 9Has CodeICLR
Originality Incremental advance
AI Analysis

This work addresses interpretability for vision Transformers, which is crucial for practical applications, though it appears incremental by building on prior neuron analysis methods.

The paper tackles the problem of understanding vision Transformers by identifying influential neuron paths that impact model inference, demonstrating superiority over baselines and showing these paths preserve model capability in tasks like image classification.

Vision Transformer models exhibit immense power yet remain opaque to human understanding, posing challenges and risks for practical applications. While prior research has attempted to demystify these models through input attribution and neuron role analysis, there's been a notable gap in considering layer-level information and the holistic path of information flow across layers. In this paper, we investigate the significance of influential neuron paths within vision Transformers, which is a path of neurons from the model input to output that impacts the model inference most significantly. We first propose a joint influence measure to assess the contribution of a set of neurons to the model outcome. And we further provide a layer-progressive neuron locating approach that efficiently selects the most influential neuron at each layer trying to discover the crucial neuron path from input to output within the target model. Our experiments demonstrate the superiority of our method finding the most influential neuron path along which the information flows, over the existing baseline solutions. Additionally, the neuron paths have illustrated that vision Transformers exhibit some specific inner working mechanism for processing the visual information within the same image category. We further analyze the key effects of these neurons on the image classification task, showcasing that the found neuron paths have already preserved the model capability on downstream tasks, which may also shed some lights on real-world applications like model pruning. The project website including implementation code is available at https://foundation-model-research.github.io/NeuronPath/.

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