widyr: Widen, process, and re-tidy a dataset

This package wraps the pattern of un-tidying data into a wide matrix, performing some processing, then turning it back into a tidy form. This is useful for several mathematical operations such as co-occurrence counts, correlations, or clustering that are best done on a wide matrix.

Towards a precise definition of “wide” data

The term “wide data” has gone out of fashion as being “imprecise” (Wickham 2014)), but I think with a proper definition the term could be entirely meaningful and useful.

A wide dataset is one or more matrices where:

  • Each row is one item
  • Each column is one feature
  • Each value is one observation
  • Each matrix is one variable

When would you want data to be wide rather than tidy? Notable examples include classification, clustering, correlation, factorization, or other operations that can take advantage of a matrix structure. In general, when you want to compare between items rather than compare between variables, this is a useful structure.

The widyr package is based on the observation that during a tidy data analysis, you often want data to be wide only temporarily, before returning to a tidy structure for visualization and further analysis. widyr makes this easy through a set of pairwise_ functions.

Example: gapminder

Consider the gapminder dataset in the gapminder package.

library(dplyr)
## 
## Attaching package: 'dplyr'
## The following objects are masked from 'package:stats':
## 
##     filter, lag
## The following objects are masked from 'package:base':
## 
##     intersect, setdiff, setequal, union
library(gapminder)

gapminder
## # A tibble: 1,704 × 6
##    country     continent  year lifeExp      pop gdpPercap
##    <fct>       <fct>     <int>   <dbl>    <int>     <dbl>
##  1 Afghanistan Asia       1952    28.8  8425333      779.
##  2 Afghanistan Asia       1957    30.3  9240934      821.
##  3 Afghanistan Asia       1962    32.0 10267083      853.
##  4 Afghanistan Asia       1967    34.0 11537966      836.
##  5 Afghanistan Asia       1972    36.1 13079460      740.
##  6 Afghanistan Asia       1977    38.4 14880372      786.
##  7 Afghanistan Asia       1982    39.9 12881816      978.
##  8 Afghanistan Asia       1987    40.8 13867957      852.
##  9 Afghanistan Asia       1992    41.7 16317921      649.
## 10 Afghanistan Asia       1997    41.8 22227415      635.
## # ℹ 1,694 more rows

This tidy format (one-row-per-country-per-year) is very useful for grouping, summarizing, and filtering operations. But if we want to compare pairs of countries (for example, to find countries that are similar to each other), we would have to reshape this dataset. Note that here, country is the item, while year is the feature column.

Pairwise operations

The widyr package offers pairwise_ functions that operate on pairs of items within data. An example is pairwise_dist:

library(widyr)

gapminder %>%
  pairwise_dist(country, year, lifeExp)
## # A tibble: 20,022 × 3
##    item1      item2       distance
##    <fct>      <fct>          <dbl>
##  1 Albania    Afghanistan   107.  
##  2 Algeria    Afghanistan    76.8 
##  3 Angola     Afghanistan     4.65
##  4 Argentina  Afghanistan   110.  
##  5 Australia  Afghanistan   129.  
##  6 Austria    Afghanistan   124.  
##  7 Bahrain    Afghanistan    98.1 
##  8 Bangladesh Afghanistan    45.3 
##  9 Belgium    Afghanistan   125.  
## 10 Benin      Afghanistan    39.3 
## # ℹ 20,012 more rows

In a single step, this finds the Euclidean distance between the lifeExp value in each pair of countries, matching pairs based on year. We could find the closest pairs of countries overall with arrange():

gapminder %>%
  pairwise_dist(country, year, lifeExp) %>%
  arrange(distance)
## # A tibble: 20,022 × 3
##    item1          item2          distance
##    <fct>          <fct>             <dbl>
##  1 Germany        Belgium            1.08
##  2 Belgium        Germany            1.08
##  3 United Kingdom New Zealand        1.51
##  4 New Zealand    United Kingdom     1.51
##  5 Norway         Netherlands        1.56
##  6 Netherlands    Norway             1.56
##  7 Italy          Israel             1.66
##  8 Israel         Italy              1.66
##  9 Finland        Austria            1.94
## 10 Austria        Finland            1.94
## # ℹ 20,012 more rows

Notice that this includes duplicates (Germany/Belgium and Belgium/Germany). To avoid those (the upper triangle of the distance matrix), use upper = FALSE:

gapminder %>%
  pairwise_dist(country, year, lifeExp, upper = FALSE) %>%
  arrange(distance)
## # A tibble: 10,011 × 3
##    item1       item2          distance
##    <fct>       <fct>             <dbl>
##  1 Belgium     Germany            1.08
##  2 New Zealand United Kingdom     1.51
##  3 Netherlands Norway             1.56
##  4 Israel      Italy              1.66
##  5 Austria     Finland            1.94
##  6 Belgium     United Kingdom     1.95
##  7 Iceland     Sweden             2.01
##  8 Comoros     Mauritania         2.01
##  9 Belgium     United States      2.09
## 10 Germany     Ireland            2.10
## # ℹ 10,001 more rows

In some analyses, we may be interested in correlation rather than distance of pairs. For this we would use pairwise_cor:

gapminder %>%
  pairwise_cor(country, year, lifeExp, upper = FALSE, sort = TRUE)
## # A tibble: 10,011 × 3
##    item1        item2                 correlation
##    <fct>        <fct>                       <dbl>
##  1 Indonesia    Mauritania                  1.00 
##  2 Morocco      Senegal                     1.00 
##  3 Saudi Arabia West Bank and Gaza          1.00 
##  4 Brazil       France                      0.999
##  5 Bahrain      Reunion                     0.999
##  6 Malaysia     Sao Tome and Principe       0.999
##  7 Peru         Syria                       0.999
##  8 Bolivia      Gambia                      0.999
##  9 Indonesia    Morocco                     0.999
## 10 Libya        Senegal                     0.999
## # ℹ 10,001 more rows