Functions for Pre-Processing Data for Multivariate Data Visualisation using Tours


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Documentation for package ‘mulgar’ version 1.0.2

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aflw AFLW player statistics
box 3D plane in 5D
bushfires Australian bushfires 2019-2020
c1 Challenge data sets
c2 Challenge data sets
c3 Challenge data sets
c4 Challenge data sets
c5 Challenge data sets
c6 Challenge data sets
c7 Challenge data sets
calc_mv_dist Compute Mahalanobis distances between all pairs of observations
calc_norm Calculate the norm of a vector
clusters Three clusters in 5D
clusters_nonlin Four unusually shaped clusters in 4D
convert_proj_tibble This function turns a projection sequence into a tibble
gen_vc_ellipse Generate points on the surface of an ellipse
gen_xvar_ellipse Ellipse matching data center and variance
ggmcbic Produces an mclust summary plot with ggplot
ggscree This function produces a simple scree plot
ggslice Generate an axis-parallel slice display
ggslice_projection Generate slice display
hierfly Generate a dendrogram to be added to data
mc_ellipse Computes the ellipses of an mclust model
multicluster Multiple clusters of different sizes, shapes and distance from each other
norm_vec Normalise a vector to have length 1
pca_model Create wire frame of PCA model
pisa PISA scores
plane 2D plane in 5D
plane_nonlin Non-linear relationship in 5D
pooled_vc Compute pooled variance-covariance matrix
rmvn Generate a sample from a multivariate normal
simple_clusters Two clusters in 2D
sketches_test Images of sketches for testing
sketches_train Images of sketches for training
som_model Process the output from SOM to display the map and data