Simple LLM Baselines are Competitive for Model Diffing
每日信息看板 · 2026-02-10
2026-02-10T23:45:26Z
Published
AI 总结
Standard LLM evaluations only test capabilities or dispositions that evaluators designed them for, missing unexpected differences such as behavioral shifts bet…
- Standard LLM evaluations only test capabilities or dispositions that evaluators designed them for, missing unexpected differences such as b…
- Model diffing addresses this limitation by automatically surfacing systematic behavioral differences
- Recent approaches include LLM-based methods that generate natural language descriptions and sparse autoencoder (SAE)-based methods that ide…
- However, no systematic comparison of these approaches exists nor are there established evaluation criteria
- We address this gap by proposing evaluation metrics for key desiderata (generalization, interestingness, and abstraction level) and use the…
- Our results show that an improved LLM-based baseline performs comparably to the SAE-based method while typically surfacing more abstract be…
#arXiv #paper #研究/论文
内容摘录
Standard LLM evaluations only test capabilities or dispositions that evaluators designed them for, missing unexpected differences such as behavioral shifts between model revisions or emergent misaligned tendencies. Model diffing addresses this limitation by automatically surfacing systematic behavioral differences. Recent approaches include LLM-based methods that generate natural language descriptions and sparse autoencoder (SAE)-based methods that identify interpretable features. However, no systematic comparison of these approaches exists nor are there established evaluation criteria. We address this gap by proposing evaluation metrics for key desiderata (generalization, interestingness, and abstraction level) and use these to compare existing methods. Our results show that an improved LLM-based baseline performs comparably to the SAE-based method while typically surfacing more abstract behavioral differences.