Review for NeurIPS paper: Regularized linear autoencoders recover the principal components, eventually
–Neural Information Processing Systems
This paper investigates ways for the regularized linear autoencoder to recover the original principal components of a matrix, and it shows that non-uniform L2 regularization and nested dropout lead to such recovery, ordinary GD using these objectives suffers from slow convergence, a new alternative optimization algorithm can accelerate convergence, and this new algorithm is connected to a Hebbian algorithm. The paper is well written and makes a nice contribution. All reviewers were positive, and several reviewers improved their scores in light of the author responses and subsequent discussion.
Neural Information Processing Systems
Jan-24-2025, 06:23:25 GMT
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