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    Por favor, use este identificador para citar o enlazar este ítem: https://hdl.handle.net/10259/11282

    Título
    An Extensive Performance Comparison between Feature Reduction and Feature Selection Preprocessing Algorithms on Imbalanced Wide Data
    Autor
    Ramos Pérez, IsmaelAutoridad UBU Orcid
    Barbero Aparicio, José AntonioAutoridad UBU Orcid
    Canepa Oneto, Antonio JesúsAutoridad UBU Orcid
    Arnaiz González, ÁlvarAutoridad UBU Orcid
    Maudes Raedo, Jesús M.Autoridad UBU Orcid
    Publicado en
    Information. 2024, V. 15, n. 4, 223
    Editorial
    MDPI
    Fecha de publicación
    2024-04
    ISSN
    2078-2489
    DOI
    10.3390/info15040223
    Résumé
    The most common preprocessing techniques used to deal with datasets having high dimensionality and a low number of instances—or wide data—are feature reduction (FR), feature selection (FS), and resampling. This study explores the use of FR and resampling techniques, expanding the limited comparisons between FR and filter FS methods in the existing literature, especially in the context of wide data. We compare the optimal outcomes from a previous comprehensive study of FS against new experiments conducted using FR methods. Two specific challenges associated with the use of FR are outlined in detail: finding FR methods that are compatible with wide data and the need for a reduction estimator of nonlinear approaches to process out-of-sample data. The experimental study compares 17 techniques, including supervised, unsupervised, linear, and nonlinear approaches, using 7 resampling strategies and 5 classifiers. The results demonstrate which configurations are optimal, according to their performance and computation time. Moreover, the best configuration—namely, k Nearest Neighbor (KNN) + the Maximal Margin Criterion (MMC) feature reducer with no resampling—is shown to outperform state-of-the-art algorithms.
    Palabras clave
    Feature selection
    Feature reduction
    Wide data
    High dimensional data
    Imbalanced data
    Machine learning
    Materia
    Informática
    Computer science
    Inteligencia artificial
    Artificial intelligence
    URI
    https://hdl.handle.net/10259/11282
    Versión del editor
    https://doi.org/10.3390/info15040223
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