Cross-seed explainability using Procrustes-conditioned Joint End-to-end Top-K Sparse Autoencoders
We present a Procrustes-conditioned Joint End-to-end Top-K Sparse Autoencoder (SAE) for extracting cross-seed universal features from independently trained BERT models. Cross-seed feature universality is a fundamental challenge in mechanistic interpretability: because dictionary learning is non-convex, independently trained networks learn misaligned feature spaces, so apparently identical features may differ by random initialization. We address this by computing an orthogonal Procrustes rotation between seeds' activation spaces before joint SAE training, combining Top-K sparsity, end-to-end do
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- LinkedLinked via arxiv author · 85%Bendegúz Váradi →
“Cross-seed explainability using Procrustes-conditioned Joint End-to-end Top-K Sparse Autoencoders”
- LinkedLinked via arxiv author · 85%Zoltán Kmetty →
“Cross-seed explainability using Procrustes-conditioned Joint End-to-end Top-K Sparse Autoencoders”
- PossiblePossibly related (embedding) · 48%A unifying framework from neural superposition to sparse interpretable codes →
- PossiblePossibly related (embedding) · 48%A unifying framework from neural superposition to sparse interpretable codes - Nature →
