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Extending Kernel PCA through Dualization: Sparsity, Robustness and Fast Algorithms

The paper extends KPCA by dualizing a difference of convex functions, introducing efficient gradient-based algorithms and promoting robustness and sparsity without expensive SVD.

Year
2023
Venue
arXiv 2023
Authors
4
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arxiv.org/abs/2306.05815ARXIV-DEFAULT
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Abstract

The goal of this paper is to revisit Kernel Principal Component Analysis (KPCA) through dualization of a difference of convex functions. This allows to naturally extend KPCA to multiple objective functions and leads to efficient gradient-based algorithms avoiding the expensive SVD of the Gram matrix. Particularly, we consider objective functions that can be written as Moreau envelopes, demonstrating how to promote robustness and sparsity within the same framework. The proposed method is evaluated on synthetic and real-world benchmarks, showing significant speedup in KPCA training time as well as highlighting the benefits in terms of robustness and sparsity.

Authors

4