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discoveR (version 3.1.2)

Exploratory Data Analysis System

Description

Performs an exploratory data analysis through a 'shiny' interface. It includes basic methods such as the mean, median, mode, normality test, among others. It also includes clustering techniques such as Principal Components Analysis, Hierarchical Clustering and the K-Means Method.

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Version

Install

install.packages('discoveR')

Version

3.1.2

License

GPL (>= 2)

Last Published

January 20th, 2023

Functions in discoveR (3.1.2)

e_mapa

PCA plot of individuals colored by clusters
e_horiz

Horizontal representation for centers of clusters.
e_radar

Radar representation for centers of clusters.
e_silhouette

Silhouette plot
e_cat

Barplot for categoric variable by clusters.
mod_acp_server

acp Server Function
e_balloon

Balloonplot
inercia.total

Calculate total inertia
e_afcmcat

AFCM plot of categories
e_mapa_3D

PCA plot of individuals colored by clusters
e_vert

Vertical representation for centers of clusters.
e_pcabi

PCA biplot
e_inercia

Inertia plot of clusterization
e_jambu

Jambu Elbow plot
mod_cj_server

cj Server Function
e_pcabi_3D

PCA biplot in 3D
e_pcavar_3D

PCA plot of variables in 3D
e_pcavar

PCA plot of variables
e_pcaind

PCA plot of individuals
e_pcaind_3D

PCA plot of individuals in 3D
mod_kmedias_server

kmedias Server Function
run_app

Run the Shiny Application
gg_dendrograma

Dendrogram plot
e_afcbi_3D

AFC biplot in 3D
app_server

The application server-side
e_afccol_3D

AFC plot of variables in 3D
e_afcmbi

AFCM biplot
WP

Calculate intra-class inertia
e_afcbi

AFC biplot
BP

Calculate inter-class inertia
e_afccol

AFC plot of variables
calc.centros

Calculation of the center of clusters
discoveR

Exploratory Data Analysis System
e_afcrow

AFC plot of individuals
e_afcmcat_3D

AFCM plot of categories in 3D
e_afcrow_3D

AFC plot of individuals in 3D
e_afcmvar_3D

AFCM plot of variables in 3D
e_afcmind_3D

AFCM plot of individuals in 3D
e_afcmbi_3D

AFCM biplot in 3D
e_afcmind

AFCM plot of individuals
e_afcmvar

AFCM plot of variables