Automatic Discovery of Visual Circuits
Rajaram, Achyuta, Chowdhury, Neil, Torralba, Antonio, Andreas, Jacob, Schwettmann, Sarah
–arXiv.org Artificial Intelligence
To date, most discoveries of network subcomponents that implement humaninterpretable computations in deep vision models have involved close study of single units and large amounts of human labor. We explore scalable methods for extracting the subgraph of a vision model's computational graph that underlies recognition of a specific visual concept. We introduce a new method for identifying these subgraphs: specifying a visual concept using a few examples, and then tracing the interdependence of neuron activations across layers, or their functional connectivity. We find that our approach extracts circuits that causally affect model output, and that editing these circuits can defend large pretrained models from adversarial attacks. Our code and data are available at https://github.com/
arXiv.org Artificial Intelligence
Apr-22-2024
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