Effortlessly visualize all columns in a data frame with vertically aligned plots and automatic plot selection based on variable type. Plots are fully interactive, and custom tooltips can be added.
Why 1 dimensional plots?
To understand trends in your data, especially correlative relationships between 2 or more features, it can be useful to densely stack visual representations of each feature vertically, regardless of data type. By unifying the $x$-axis across each plot, gg1d turns a series of 1D plots into an $n\text{-dimensional}$ visualization where $n = \text{number of columns in dataset}$. Note the key idea of gg1d is to ‘preserve the individual.’ gg1d does NOT plot distributions of properties, but rather each value of a feature for each subject/observation in the dataset.
gg1d can be used for exploratory data analysis (EDA) or to produce publication quality graphics summarizing a dataset.
You can install the development version of gg1d from GitHub with:
if (!require("remotes"))
install.packages("remotes")
remotes::install_github("selkamand/gg1d")
For examples of interactive gg1d plots see the gg1d gallery
# Load library
library(gg1d)
# Read data
path_gg1d <- system.file("example.csv", package = "gg1d")
df <- read.csv(path_gg1d, header = TRUE, na.strings = "")
# Plot data, sort by Glasses
gg1d(
df,
col_id = "ID",
col_sort = "Glasses",
interactive = FALSE,
verbose = FALSE,
options = gg1d_options(legend_nrow = 2)
)
Customise colours by supplying a named list to the palettes
argument
gg1d(
df,
col_id = "ID",
col_sort = "Glasses",
palettes = list("EyeColour" = c(
Brown = "rosybrown4",
Blue = "steelblue",
Green = "seagreen"
)),
interactive = FALSE,
verbose = FALSE,
options = gg1d_options(legend_nrow = 2)
)
All types of contributions are encouraged and valued. See our guide to community contributions for different ways to help.