Paper Detail

Structural Graph Probing of Vision-Language Models

Haoyu He, Yue Zhuo, Yu Zheng, Qi R. Wang

huggingface Score 5.0

Published 2026-03-28 · First seen 2026-04-10

General AI

Abstract

Vision-language models (VLMs) achieve strong multimodal performance, yet how computation is organized across populations of neurons remains poorly understood. In this work, we study VLMs through the lens of neural topology, representing each layer as a within-layer correlation graph derived from neuron-neuron co-activations. This view allows us to ask whether population-level structure is behaviorally meaningful, how it changes across modalities and depth, and whether it identifies causally influential internal components under intervention. We show that correlation topology carries recoverable behavioral signal; moreover, cross-modal structure progressively consolidates with depth around a compact set of recurrent hub neurons, whose targeted perturbation substantially alters model output. Neural topology thus emerges as a meaningful intermediate scale for VLM interpretability: richer than local attribution, more tractable than full circuit recovery, and empirically tied to multimodal behavior. Code is publicly available at https://github.com/he-h/vlm-graph-probing.

Workflow Status

Review status
pending
Role
unreviewed
Read priority
later
Vote
Not set.
Saved
no
Collections
Not filed yet.
Next action
Not filled yet.

Reading Brief

No structured notes yet. Add `summary_sections`, `why_relevant`, `claim_impact`, or `next_action` in `papers.jsonl` to enrich this view.

Why It Surfaced

No ranking explanation is available yet.

Tags

No tags.

BibTeX

@misc{he2026structural,
  title = {Structural Graph Probing of Vision-Language Models},
  author = {Haoyu He and Yue Zhuo and Yu Zheng and Qi R. Wang},
  year = {2026},
  abstract = {Vision-language models (VLMs) achieve strong multimodal performance, yet how computation is organized across populations of neurons remains poorly understood. In this work, we study VLMs through the lens of neural topology, representing each layer as a within-layer correlation graph derived from neuron-neuron co-activations. This view allows us to ask whether population-level structure is behaviorally meaningful, how it changes across modalities and depth, and whether it identifies causally infl},
  url = {https://huggingface.co/papers/2603.27070},
  keywords = {vision-language models, neural topology, correlation graph, neuron-neuron co-activations, multimodal performance, recurrent hub neurons, intervention, behavioral signal, code available, huggingface daily},
  eprint = {2603.27070},
  archiveprefix = {arXiv},
}

Metadata

{}