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Erschienen in: Neural Processing Letters 3/2022

16.01.2022

A Sparse Online Approach for Streaming Data Classification via Prototype-Based Kernel Models

verfasst von: David N. Coelho, Guilherme A. Barreto

Erschienen in: Neural Processing Letters | Ausgabe 3/2022

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Abstract

Processing big data streams through machine learning algorithms has various challenges, such as little time to train the models, hardware memory constraints, and concept drift. In this paper, we show that prototype-based kernel classifiers designed by sparsification procedures, such as the approximate linear dependence (ALD) method, provides an adequate tradeoff between accuracy and size complexity of kernelized nearest neighbor classifiers. The proposed approach automatically selects relevant samples from the training data stream to form a sparse dictionary of prototypes, which are then used in kernelized distance metrics to classify arriving samples on the fly. Additionally, the proposed method is fully adaptive, in the sense that it updates and removes prototypes from the dictionary, enabling it to learn continuously in nonstationary environments. The results obtained from a comprehensive set of computer simulations involving artificial and real streaming data sets indicate that the proposed algorithm can build models with low complexity and competitive classification error rates compared to state of the art.

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Fußnoten
2
Sometimes normalized by the quadratic norm of the difference vector, i.e. \(\Vert \mathbf {w}_{i^*}(t)-\mathbf {x}(t)\Vert ^2\).
 
3
A binary vector of length \(m_{t-1}\) with the k-th element set to to 1. All the other elements are set to zero.
 
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Metadaten
Titel
A Sparse Online Approach for Streaming Data Classification via Prototype-Based Kernel Models
verfasst von
David N. Coelho
Guilherme A. Barreto
Publikationsdatum
16.01.2022
Verlag
Springer US
Erschienen in
Neural Processing Letters / Ausgabe 3/2022
Print ISSN: 1370-4621
Elektronische ISSN: 1573-773X
DOI
https://doi.org/10.1007/s11063-021-10701-9

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