This paper introduces the Multi-Layer Sparse Autoencoder (MLSAE), a novel approach for interpreting the internal representations of transformer language models. Unlike traditional Sparse Autoencoders (SAEs) that analyze individual layers, MLSAEs are trained across all layers of a transformer's residual stream, enabling the study of information flow across layers. The research found that while individual "latents" (features learned by the SAE) tend to be active at a single layer for a given input, they are active at multiple layers when aggregated over many inputs, with this multi-layer activity increasing in larger models. The authors also explored the effect of "tuned-lens" transformations on latent activations, ultimately providing a new method for understanding how representations evolve within transformers.
資訊
- 節目
- 頻率每月更新
- 發佈時間2025年8月9日 上午7:03 [UTC]
- 長度14 分鐘
- 年齡分級兒少適宜
