lingtypology: Glottolog functions

This package is based on the Glottolog database, so lingtypology has several functions for accessing data from that database.

1. Command name’s syntax

Most of the functions in lingtypology have the same syntax: what you need.what you have. Most of them are based on language name.

Some of them help to define a vector of languages.

Additionally there are some functions to convert glottocodes to ISO 639-3 codes and vice versa:

The most important functionality of lingtypology is the ability to create interactive maps based on features and sets of languages (see the third section):

Glottolog database (v. 4.1) provides lingtypology with language names, ISO codes, glottocodes, affiliation, macro area, coordinates, and much information. This set of functions doesn’t have a goal to cover all possible combinations of functions. Check out additional information that is preserved in the version of the Glottolog database used in lingtypology:

names(glottolog)
##  [1] "glottocode"        "language"          "iso"              
##  [4] "level"             "area"              "latitude"         
##  [7] "longitude"         "countries"         "affiliation"      
## [10] "subclassification"

Using R functions for data manipulation you can create your own database for your purpose.

2. Using base functions

All functions introduced in the previous section are regular functions, so they can take the following objects as input:

iso.lang("West Circassian")
## West Circassian 
##           "ady"
lang.iso("ady")
##               ady 
## "West Circassian"
lang.aff("Abkhaz-Adyge")
## [1] "Ubykh"           "West Circassian" "Kabardian"       "Abkhaz"         
## [5] "Abaza"

I would like to point out that you can create strings in R using single or double quotes. Since inserting single quotes in a string created with single quotes causes an error in R, I use double quotes in my tutorial. You can use single quotes, but be careful and remember that 'Ma'ya' is an incorrect string in R.

area.lang(c("Kabardian", "Aduge"))
## Kabardian     Aduge 
## "Eurasia"  "Africa"
lang <- c("Kabardian", "Russian")
aff.lang(lang)
##                                                                   Kabardian 
##                                                  "Abkhaz-Adyge, Circassian" 
##                                                                     Russian 
## "Indo-European, Classical Indo-European, Balto-Slavic, Slavic, East Slavic"
iso.lang(lang.aff("Abkhaz-Adyge"))
##           Ubykh West Circassian       Kabardian          Abkhaz           Abaza 
##           "uby"           "ady"           "kbd"           "abk"           "abq"

If you are new to R, it is important to mention that you can create a table with languages, features and other parametres with any spreadsheet software you used to work. Then you can import the created file to R using standard tools.

3. Spell Checker: look carefully at warnings!

All functions which take a vector of languages are enriched with a kind of a spell checker. If a language from a query is absent in the database, functions return a warning message containing a set of candidates with the minimal Levenshtein distance to the language from the query.

aff.lang("Kabardian")
##                  Kabardian 
## "Abkhaz-Adyge, Circassian"

4. subc.lang() function

The subc.lang() function returns language subclassification in the Newick tree format.

subc.lang("Lechitic")
##                                                                                                                                             Lechitic 
## "((Kashubian_Proper:1,Slovincian:1)kash1274:1,Polabian:1,((Great_Poland:1,Little_Poland:1,Old_Polish:1)poli1260:1,Silesian:1)poli1262:1)lech1241:1;"

This format is hard to interpret by itself, but there are some tools in R that make it possible to visualise those subclassifications:

library(ape)
plot(read.tree(text = subc.lang("Lechitic")))

It is possible to specify colors of tips in case you want to emphasize some nodes:

plot(read.tree(text = subc.lang("Lechitic")),
     tip.color = c("red", "black", "black", "black"))

As you can see nodes are counted from bottom to top.

For more sophisticated tree visualization you can look into ggtree package. There are several linguistic packages that provide some functionality for creating glottolog trees: