Articles producció científicaEnginyeria Informàtica i Matemàtiques

Dimension Reduction of Multidimensional Structured and Unstructured Datasets through Ensemble Learning of Neural Embeddings

  • Dades identificatives

    Identificador:  imarina:9443785
    Autors:  Alvarado-Perez, Juan Carlos; Garcia, Miguel Angel; Puig, Domenec
    Resum:
    Dimension reduction aims to project a high-dimensional dataset into a low-dimensional space. It tries to preserve the topological relationships among the original data points and/or induce clusters. NetDRm, an online dimensionality reduction method based on neural ensemble learning that integrates different dimension reduction methods in a synergistic way, is introduced. NetDRm is designed for datasets of multidimensional points that can be either structured (e.g., images) or unstructured (e.g., point clouds, tabular data). It starts by training a collection of deep residual encoders that learn the embeddings induced by multiple dimension reduction methods applied to the input dataset. Subsequently, a dense neural network integrates the generated encoders by emphasizing topological preservation or cluster induction. Experiments conducted on widely used multidimensional datasets (point-cloud manifolds, image datasets, tabular record datasets) show that the proposed method yields better results in terms of topological preservation (RNX$R_{\text{NX}}$ curves), cluster induction (V measure), and classification accuracy than the most relevant dimension reduction methods. Dimension reduction maps high-dimensional data into low-dimensional space, preserving topological relationships and inducing clusters. NetDRm is an online method based on neural ensemble learning that integrates various reduction methods. It uses deep encoders and a dense neural network to improve topological preservation, cluster induction, and classification accuracy, surpassing relevant methods.image (c) 2024 WILEY-VCH GmbH
  • Altres:

    Enllaç font original: https://advanced.onlinelibrary.wiley.com/doi/10.1002/aisy.202400178
    Referència de l'ítem segons les normes APA: Alvarado-Perez, Juan Carlos; Garcia, Miguel Angel; Puig, Domenec (2024). Dimension Reduction of Multidimensional Structured and Unstructured Datasets through Ensemble Learning of Neural Embeddings. Advanced Intelligent Systems, 6(11), -. DOI: 10.1002/aisy.202400178
    Referència a l'article segons font original: Advanced Intelligent Systems. 6 (11):
    DOI de l'article: 10.1002/aisy.202400178
    Any de publicació de la revista: 2024
    Entitat: Universitat Rovira i Virgili
    Versió de l'article dipositat: info:eu-repo/semantics/publishedVersion
    Data d'alta del registre: 2025-02-19
    Autor/s de la URV: Puig Valls, Domènec Savi
    Departament: Enginyeria Informàtica i Matemàtiques
    URL Document de llicència: https://repositori.urv.cat/ca/proteccio-de-dades/
    Tipus de publicació: Journal Publications
    Autor segons l'article: Alvarado-Perez, Juan Carlos; Garcia, Miguel Angel; Puig, Domenec
    Accès a la llicència d'ús: https://creativecommons.org/licenses/by/3.0/es/
    Àrees temàtiques: Artificial intelligence, Automation & control systems, Computer science, artificial intelligence, Computer vision and pattern recognition, Control and systems engineering, Electrical and electronic engineering, Human-computer interaction, Materials science (miscellaneous), Mechanical engineering, Robotics
    Adreça de correu electrònic de l'autor: domenec.puig@urv.cat
  • Paraules clau:

    Cluster inductions
    Dimensionality reductions
    Ensemble learning
    Grap
    Intelligence
    Manifold approximations
    Online processing
    Topological preservations
    Unsupervised deep network
    Unsupervised deep networks
    Artificial Intelligence
    Automation & Control Systems
    Computer Science
    Computer Vision and Pattern Recognition
    Control and Systems Engineering
    Electrical and Electronic Engineering
    Human-Computer Interaction
    Materials Science (Miscellaneous)
    Mechanical Engineering
    Robotics
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