Fast k-nearest neighbors for Big Data and Smart Data

  1. Maillo Hidalgo, Jesús
unter der Leitung von:
  1. Francisco Herrera Triguero Doktorvater/Doktormutter
  2. Isaac Triguero Velázquez Doktorvater/Doktormutter

Universität der Verteidigung: Universidad de Granada

Fecha de defensa: 07 von Mai von 2020

Gericht:
  1. Óscar Cordón García Präsident/in
  2. Victoria Luzón García Sekretär/in
  3. Antonio Peregrín Rubio Vocal
  4. Daniel Peralta Cámara Vocal
  5. Javier del Ser Lorente Vocal

Art: Dissertation

Zusammenfassung

In this thesis, we have presented an extensive study of the kNN algorithm in Big Data problems and its application to transform Big Data into Smart Data. The objective has been to the design, implementation, analysis and evaluation of the proposed algorithms. This thesis started by enabling the original kNN classifier to tackle Big Data problems, and then we extended that proposal to allow its fuzzy variation, in order to improve the scalability and accuracy. Afterwards, the implication of the kNN algorithm in obtaining Smart Data is analysed, highlighting the proposal as an imputation of MVs. Finally, two specific complexity and density metrics for Big Data problems are proposed in order to study the redundancy information in large scale datasets.