No. 65 (2018): No. 65 - Jun 2018
Articulos Entorno

Extraction of knowledge from texts obtained from Twitter

Ronny Adalberto Cortez Reyes
Universidad Tecnológica de El Salvador

Published 2018-06-01

Keywords

  • Lenguajes de procesamiento de texto,
  • Archivos de texto,
  • Visualización de la información,
  • Recuperación de información,
  • Sistemas de almacenamiento y recuperación de información,
  • Tecnología de las comunicaciones,
  • Telecomunicaciones
  • ...More
    Less

Abstract

The objective of “Extraction of knowledge from texts obtained from Twitter“ is to apply data mining techniques to a set of tweets, in order to extract information to be able to find out what people are talking about and thus generate ideas or concepts, with the use of a variety of graphic representations.
A set of tweets generated between January 1 and February 21, 2018 has been used to conduct this analysis, and the topic is related to artificial intelligence. The process was divided in three main phases: tweets collection, text processing and display of results.
The use of a variety of graphs facilitated the presentation of comprehensible data for the reader; this allowed them to have an idea on the concepts being expressed in the texts and the selection of the main ideas.

URI: http://hdl.handle.net/11298/451
DOI: https://doi.org/10.5377/entorno.v0i65.6048

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