Large-scale Kernel-based Feature Extraction via Budgeted Nonlinear Subspace Tracking
Fatemeh Sheikholeslami, Dimitris Berberidis, Georgios B.Giannakis

TL;DR
This paper introduces a scalable, online kernel-based feature extraction method that uses a low-rank nonlinear subspace to efficiently handle large datasets without extensive memory use.
Contribution
It proposes a novel low-rank, kernel-based feature extraction approach with offline and online algorithms, including budgeted versions for large-scale data processing.
Findings
Efficient online subspace learning with performance bounds.
Effective kernel approximation for classification and regression.
Demonstrated scalability on synthetic and real datasets.
Abstract
Kernel-based methods enjoy powerful generalization capabilities in handling a variety of learning tasks. When such methods are provided with sufficient training data, broadly-applicable classes of nonlinear functions can be approximated with desired accuracy. Nevertheless, inherent to the nonparametric nature of kernel-based estimators are computational and memory requirements that become prohibitive with large-scale datasets. In response to this formidable challenge, the present work puts forward a low-rank, kernel-based, feature extraction approach that is particularly tailored for online operation, where data streams need not be stored in memory. A novel generative model is introduced to approximate high-dimensional (possibly infinite) features via a low-rank nonlinear subspace, the learning of which leads to a direct kernel function approximation. Offline and online solvers are…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Advanced Adaptive Filtering Techniques · Face and Expression Recognition
