The Knowledge Microscope: Features as Better Analytical Lenses than Neurons

Previous studies primarily utilize MLP neurons as units of analysis for understanding the mechanisms of factual knowledge in Language Models (LMs); however, neurons suffer from polysemanticity, leading to limited knowledge expression and poor interpretability. In this paper, we first conduct preliminary experiments to validate that Sparse Autoencoders (SAE) can effectively decompose neurons into features, which serve as alternative analytical units. With this established, our core findings reveal three key advantages of features over neurons: (1) Features exhibit stronger influence on knowledge expression and superior interpretability. (2) Features demonstrate enhanced monosemanticity, showing distinct activation patterns between related and unrelated facts. (3) Features achieve better privacy protection than neurons, demonstrated through our proposed FeatureEdit method, which significantly outperforms existing neuron-based approaches in erasing privacy-sensitive information fromthis http URLand dataset will be available.
View on arXiv@article{chen2025_2502.12483, title={ The Knowledge Microscope: Features as Better Analytical Lenses than Neurons }, author={ Yuheng Chen and Pengfei Cao and Kang Liu and Jun Zhao }, journal={arXiv preprint arXiv:2502.12483}, year={ 2025 } }