Karahan Sarıtaş


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2025

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A Reproduction Study: The Kernel PCA Interpretation of Self-Attention Fails Under Scrutiny
Karahan Sarıtaş | Çağatay Yıldız
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 4: Student Research Workshop)

In this reproduction study, we revisit recent claims that self-attention implements kernel principal component analysis (KPCA) (Teo and Nguyen, 2024), positing that (i) value vectors V capture the eigenvectors of the Gram matrix of the keys, and (ii) that self-attention projects queries onto the principal component axes of the key matrix K in a feature space. Our analysis reveals three critical inconsistencies: (1) No alignment exists between learned self-attention value vectors and what is proposed in the KPCA perspective, with average similarity metrics (optimal cosine similarity ≤ 0.32, linear CKA (Centered Kernel Alignment) ≤ 0.11, kernel CKA ≤ 0.32) indicating negligible correspondence; (2) Reported decreases in reconstruction loss Jproj, arguably justifying the claim that the self-attentionminimizes the projection error of KPCA, are misinterpreted, as the quantities involved differ by orders of magnitude (∼ 103); (3) Gram matrix eigenvalue statistics, introduced to justify that V captures the eigenvector of the gram matrix, are irreproducible without undocumented implementation-specific adjustments. Across 10 transformer architectures, we conclude that the KPCA interpretation of self-attention lacks empirical support.