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Models

Sparse Autoencoder

SAE
Uma rede neural treinada para reconstruir as ativações internas de um modelo através de um gargalo com uma restrição de sparsity — só poucas features podem estar ativas por vez. As features aprendidas frequentemente correspondem a conceitos interpretáveis (tópicos específicos, padrões linguísticos, estratégias de raciocínio), tornando SAEs a ferramenta primária para desembaraçar as features superpostas dentro de grandes modelos de linguagem.

Por que importa

Sparse autoencoders são o microscópio da interpretabilidade mecanística. LLMs empacotam milhares de features em cada camada através de superposição, tornando neurônios individuais não-interpretáveis. SAEs decompõem essas representações superpostas em features individuais e interpretáveis. A Anthropic usou SAEs para identificar milhões de features no Claude, incluindo features para engano, conceitos específicos e comportamentos relevantes à segurança.

Deep Dive

Architecture: the SAE takes a model's activation vector (dimension d_model, e.g., 4096) and encodes it into a much larger sparse representation (e.g., 64K features, of which only ~100 are active for any given input). It then decodes back to d_model and is trained to minimize reconstruction error. The sparsity constraint (L1 penalty on the hidden layer) forces the SAE to use only a few features per input, ensuring each feature is specific rather than diffuse.

What SAEs Find

When trained on LLM activations, SAEs discover interpretable features: a "Golden Gate Bridge" feature that activates on text about the bridge, a "Python code" feature, a "French language" feature, a "sycophantic agreement" feature, and so on. These features are more interpretable than individual neurons because the sparsity constraint separates overlapping concepts that neurons represent in superposition. Anthropic's research found features ranging from concrete (specific entities) to abstract (deception, uncertainty).

Applications Beyond Interpretation

SAE features can be used for more than understanding: clamping a feature to zero suppresses the corresponding behavior (deactivating a "deception" feature), while amplifying a feature strengthens it. This opens the possibility of fine-grained behavioral control without retraining. However, the technique is still experimental — feature interactions are complex, and modifying one feature can have unintended effects on others due to residual superposition.

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