Exploring Logical Challenges in Data Visualization and Analysis in Big data Architectures: A Focus on Fallacies, Biases, and Paradoxes

 

Salvato in:
Dettagli Bibliografici
Autore: Zárate-Sánchez, Roberto
Natura: artículo original
Status:Versión publicada
Data di pubblicazione:2024
Descrizione:In this qualitative research, an identification and characterization of some of the main logical errors made when analyzing and visualizing data in Big Data architectures are conducted through a documentary and bibliographic review. It is worth noting that errors are systematized considering three categories: fallacies, biases, and paradoxes. The article aims to serve as guidance for individuals engaged in these tasks in both public and private sectors. Additionally, it provides insight into research lines related to epistemology and ethics in Big Data.
Stato:Portal de Revistas UNED
Istituzione:Universidad Estatal a Distancia
Repositorio:Portal de Revistas UNED
Lingua:Español
OAI Identifier:oai:revistas.investiga.uned.ac.cr:article/5150
Accesso online:https://revistas.uned.ac.cr/index.php/rna/article/view/5150
Keyword:Big data
falacias
sesgos
paradojas
análisis de datos
fallacies
biases
paradoxes
data analysis
sophismes
biais
analyse de données
falácias
vieses
paradoxos
análise de dados