Scaling Sparse Feature Circuits for Studying In-Context Learning

Abstract

Sparse autoencoders (SAEs) are a popular tool for interpreting large language model activations, but their utility in addressing open questions in interpretability remains unclear. In this work, we demonstrate their effectiveness by using SAEs to deepen our understanding of the mechanism behind in-context learning (ICL). We identify abstract SAE features that (i) encode the model’s knowledge of which task to execute and (ii) whose latent vectors causally induce the task zero-shot. This aligns with prior work showing that ICL is mediated by task vectors. We further demon- strate that these task vectors are well approximated by a sparse sum of SAE latents, including these task-execution features. To explore the ICL mechanism, we adapt the sparse feature circuits methodology of Marks et al. (2024) to work for the much larger Gemma-1 2B model, with 30 times as many parameters, and to the more complex task of ICL. Through circuit finding, we discover task-detecting features with corresponding SAE latents that activate earlier in the prompt, that detect when tasks have been performed. They are causally linked with task-execution features through the attention and MLP sublayers.

Cite

Text

Kharlapenko et al. "Scaling Sparse Feature Circuits for Studying In-Context Learning." ICLR 2025 Workshops: SLLM, 2025.

Markdown

[Kharlapenko et al. "Scaling Sparse Feature Circuits for Studying In-Context Learning." ICLR 2025 Workshops: SLLM, 2025.](https://mlanthology.org/iclrw/2025/kharlapenko2025iclrw-scaling/)

BibTeX

@inproceedings{kharlapenko2025iclrw-scaling,
  title     = {{Scaling Sparse Feature Circuits for Studying In-Context Learning}},
  author    = {Kharlapenko, Dmitrii and Shabalin, Stepan and Conmy, Arthur and Nanda, Neel},
  booktitle = {ICLR 2025 Workshops: SLLM},
  year      = {2025},
  url       = {https://mlanthology.org/iclrw/2025/kharlapenko2025iclrw-scaling/}
}