Elementos básicos de Análisis Inteligente de Datos

Autores/as

Jaramillo-Chuqui, Iván Fredy
Universidad Técnica Estatal de Quevedo
https://orcid.org/0000-0003-2743-1794
Villarroel-Molina, Ricardo
Universidad Técnica Estatal de Quevedo
https://orcid.org/0000-0002-6171-9815

Palabras clave:

Inteligencia, Datos, R project

Sinopsis

Este libro trata sobre conceptos elementales junto con scripts cortos de código basado en R Project para hacer análisis inteligente de datos. La relación entre la teoría y la práctica es fundamental en la comprensión de una disciplina, así la aplicación de procedimientos y funciones específicas en tareas elementales es el propósito de este texto. La idea central del texto tiene origen en la asignatura denominada “Análisis Inteligente de Datos”, una cátedra en la que el profesor aporta con elementos fundamentales basados en conceptos y ejercicios prácticos usando R Project. Hoy en día, la disponibilidad de herramientas para la minería de datos es sin duda muy grande. Usuarios con conocimientos básicos pueden aprovechar de utilitarios intuitivos implementados en poderosos entornos de desarrollo. Nosotros hemos querido dar un enfoque al texto hacia una audiencia con mayor relación a la programación y software. Específicamente que constituya una guía básica para estudiantes que inician en el campo de la Inteligencia de datos.

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Publicado

19 diciembre 2023

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