AI RESEARCH
Domain-Filtered Knowledge Graphs from Sparse Autoencoder Features
arXiv CS.AI
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ArXi:2604.23829v2 Announce Type: new Sparse autoencoders (SAEs) extract millions of interpretable features from a language model, but flat feature inventories aren't very useful on their own. Domain concepts get mixed with generic and weakly grounded features, while related ideas are scattered across many units, and there's no way to understand relationships between features. We address this by first constructing a strict domain-specific concept universe from a large SAE inventory using contrastive activations and a multi-stage filtering process.