This repository shows the 3D Principal Component Analysis (PCA) of amino acid content in African indigenous vegetables (see original publication, and the mother git repository).
The R code has been developed with reference to R for Data Science (2e), and the official documentation of tidyverse, and DataBrewer.co. See breakdown of modules below:
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Data visualization with ggplot2 (tutorial of the fundamentals; and data viz. gallery).
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Data wrangling with the following packages:
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tidyr: transform (e.g., pivoting) the dataset into tidy structure.
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dplyr: a basic tool to work with data frames.
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stringr: work with strings.
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regular expression: search and match a string pattern.
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purrr: functional programming (e.g., iterating functions across elements of columns).
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tibble: work with data frames in the modern tibble structure.