lingtypology
: creating
mapsThe most important part of the lingtypology
package is
the function map.feature
. This function allows you to
produce maps similar to known projects within the Cross-Linguistic Linked Data
philosophy, such as WALS and Glottolog:
map.feature(c("Adyghe", "Kabardian", "Polish", "Russian", "Bulgarian"))
As shown in the picture above, this function generates an interactive Leaflet map. All specific points on the map have a pop-up box that appears when markers are clicked (see section 3.3 for more information about editing pop-up boxes). By default, they contain language names linked to the glottolog site.
If for some reasons you are not using RStudio or you want to
automatically create and save a lot of maps, you can save a map to a
variable and use the htmlwidgets
package for saving created
maps to an .html file. I would like to thank Timo Roettger for
mentioning this problem.
<- map.feature(c("Adyghe", "Korean"))
m # install.packages("htmlwidgets")
library(htmlwidgets)
saveWidget(m, file="TYPE_FILE_PATH/m.html")
There is an export button in RStudio, but for some reason it is not so easy to save a map as a .png or.jpg file using code. Here is a possible solution.
The goal of this package is to allow typologists (or any other
linguists) to map language features. A list of languages and
correspondent features can be stored in a data.frame
as
follows:
<- data.frame(language = c("Adyghe", "Kabardian", "Polish", "Russian", "Bulgarian"),
df features = c("polysynthetic", "polysynthetic", "fusional", "fusional", "fusional"))
df
Now we can draw a map:
map.feature(languages = df$language,
features = df$features)
If you have a lot of features and they appear in the legend in a
senseless order(by default it is ordered alphabetically), you can
reorderthem using factors (a vector with ordered levels, for more
information see ?factor
). for example, I want the feature
polysynthetic to be listed first, followed by fusional:
$features <- factor(df$features, levels = c("polysynthetic", "fusional"))
dfmap.feature(languages = df$language, features = df$features)
Like in most functions, it is not necessary to name all arguments, so the same result can be obtained by:
map.feature(df$language, df$features)
As shown in the picture above, all points are grouped by feature, colored and counted. As before, a pop-up box appears when markers are clicked. A control feature allows users to toggle the visibility of points grouped by feature.
There are several types of variables in R and
map.feature
works differently depending on the variable
type. I will use a build in data set phonological_profiles
that contains 19 languages from UPSyD database. This
dataset have three variables: the categorical variable
ejectives
indicates whether some language has any ejective
sound, numeric variables consonants
and vowels
that contains information about the number of consonants and vowels
(based on UPSyD database). We can create two maps with categorical
variable and with numeric variable:
map.feature(phonological_profiles$language,
$ejectives) # categorical
phonological_profilesmap.feature(phonological_profiles$language,
$consonants) # numeric phonological_profiles
The main point is that for creating a correct map, you should correctly define the type of the variable.
This dataset also can be used to show one other parameter of the
map.feature
function. There are two possible ways to show
the World map: with the Atlantic sea or with the Pacific sea in the
middle. If you don’t need default Pacific view use the
map.orientation
parameter(thanks @languageSpaceLabs and @tzakharko for that idea):
map.feature(phonological_profiles$language,
$consonants,
phonological_profilesmap.orientation = "Atlantic")
Sometimes it is a good idea to add some additional information (e.g. language affiliation, references or even examples) to pop-up boxes that appear when points are clicked. In order to do so, first of all we need to create an extra vector of strings in our dataframe:
$popup <- aff.lang(df$language) df
The function aff.lang()
creates a vector of genealogical
affiliations that can be easily mapped:
map.feature(languages = df$language, features = df$features, popup = df$popup)
Pop-up strings can contain HTML tags, so it is easy to insert a link, a couple of lines, a table or even a video and sound. Here is how pop-up boxes can demonstrate language examples:
# change a df$popup vector
$popup <- c("sɐ s-ɐ-k'ʷɐ<br> 1sg 1sg.abs-dyn-go<br>'I go'",
df"sɐ s-o-k'ʷɐ<br> 1sg 1sg.abs-dyn-go<br>'I go'",
"id-ę<br> go-1sg.npst<br> 'I go'",
"ya id-u<br> 1sg go-1sg.npst <br> 'I go'",
"id-a<br> go-1sg.prs<br> 'I go'")
# create a map
map.feature(df$language,
features = df$features,
popup = df$popup)
How to say moon in Sign Languages? Here is an example:
# Create a dataframe with links to video
<- data.frame(languages = c("American Sign Language", "Russian-Tajik Sign Language", "French Sign Language"),
sign_df popup = c("https://media.spreadthesign.com/video/mp4/13/48600.mp4", "https://media.spreadthesign.com/video/mp4/12/17639.mp4", "https://media.spreadthesign.com/video/mp4/10/17638.mp4"))
# Change popup to an HTML code
$popup <- paste("<video width='200' height='150' controls> <source src='",
sign_dfas.character(sign_df$popup),
"' type='video/mp4'></video>", sep = "")
# create a map
map.feature(languages = sign_df$languages, popup = sign_df$popup)
An alternative way to add some short text to a map is to use the
label
option.
map.feature(df$language, df$features,
label = df$language)
There are some additional arguments for customization:
label.fsize
for setting font size,
label.position
for controlling the label position, and
label.hide
to control the appearance of the label: if
TRUE
, the labels are displayed on mouse over(as on the
previous map), if FALSE
, the labels are always displayed
(as on the next map).
map.feature(df$language, df$features,
label = df$language,
label.fsize = 20,
label.position = "left",
label.hide = FALSE)
There is an additional tool for emphasis of some points on the map.
The argument label.emphasize
allows to emphasize selected
points with the color specified by a user.
map.feature(df$language, df$features,
label = df$language,
label.fsize = 20,
label.position = "left",
label.hide = FALSE,
label.emphasize = list(2:4, "red"))
In this example the first vector of the list in the
label.emphasize
argument is vector 2:4
that
produce elements 2
, 3
and 4
. You
can create youro wn selected rows. e. g. c(1, 3, 4)
. The
second vector of the list is the string with a color.
You can set your own coordinates using the arguments
latitude
and longitude
. It is important to
note, that lingtypology
works only with decimal degrees
(something like this: 0.1), not with degrees, minutes and seconds
(something like this: 0° 06′ 0″). I will illustrate this with the
dataset circassian
built into the lingtypology
package. This dataset comes from fieldwork collected during several
expeditions in the period 2011-2016 and contains a list of Circassian
villages:
head(circassian)
In this dataframe you can find variables latitude
and
longitude
that could be used:
map.feature(languages = circassian$language,
features = circassian$dialect,
popup = circassian$village,
latitude = circassian$latitude,
longitude = circassian$longitude)
It is possible to collapse multiple dots into clusters:
map.feature(languages = circassian$language,
features = circassian$dialect,
popup = circassian$village,
latitude = circassian$latitude,
longitude = circassian$longitude,
point.cluster = TRUE)
You can set your own colors using the argument
color
:
<- data.frame(language = c("Adyghe", "Kabardian", "Polish", "Russian", "Bulgarian"),
df features = c("polysynthetic", "polysynthetic", "fusional", "fusional", "fusional"))
map.feature(languages = df$language,
features = df$features,
color= c("yellowgreen", "navy"))
Arguments from RColorBrewer or viridis also can be used as a color argument:
map.feature(phonological_profiles$language,
$consonants,
phonological_profilescolor= "magma")
For some scientific papers it is not possible to use colors for
destinguishing features. In that cases it is posible to use
shape
argument:
map.feature(languages = circassian$language,
features = circassian$language,
latitude = circassian$latitude,
longitude = circassian$longitude,
shape = TRUE)
The argument shape = TRUE
works fine only with 6 or less
levels in features
variable. If there are more levels in
fetures
argument, user need to provide a vector with
corresponding shapes:
map.feature(languages = circassian$language,
features = circassian$dialect,
latitude = circassian$latitude,
longitude = circassian$longitude,
shape = 1:10,
shape.size = 14)
Arguments shape.size
and shape.color
help
to change corresponding features of markers.
The package can generate a control box that allows users to toggle
the visibility of some points. To enable it, there is an argument
control
in the map.feature
function:
map.feature(languages = df$language,
features = df$features,
control = c("a", "b", "b", "b", "a"))
As you can see the control
and features
arguments are independent of each other.
The map.feature
function has an additional argument
stroke.features
. Using this argument it becomes possible to
show two independent sets of features on one map. By default strokes are
colored in grey (so for two levels it will be black and white, for three
— black, grey, white and so on), but you can set your own colors using
the argument stroke.color
:
map.feature(circassian$language,
features = circassian$dialect,
stroke.features = circassian$language,
latitude = circassian$latitude,
longitude = circassian$longitude)
It is important to note that stroke.features
can work
with NA
values. The function won’t plot anything if there
is an NA
value. Let’s set a language value to
NA
in all Baksan villages from the circassian
dataset.
# create newfeature variable
<- circassian[,c(5,6)]
newfeature # set language feature of the Baksan villages to NA and reduce newfeature from dataframe to vector
<- replace(newfeature$language, newfeature$language == "Baksan", NA)
newfeature # create a map
map.feature(circassian$language,
features = circassian$dialect,
latitude = circassian$latitude,
longitude = circassian$longitude,
stroke.features = newfeature)
All markers have their own width and opacity, so you can set it. Just
use the arguments width
, stroke.radius
,
opacity
and stroke.opacity
:
map.feature(circassian$language,
features = circassian$dialect,
stroke.features = circassian$language,
latitude = circassian$latitude,
longitude = circassian$longitude,
width = 7, stroke.radius = 13)
map.feature(circassian$language,
features = circassian$dialect,
stroke.features = circassian$language,
latitude = circassian$latitude,
longitude = circassian$longitude,
opacity = 0.7, stroke.opacity = 0.6)
By default the legend appears in the top right corner. If there are stroke features, two legends are generated. There are additional arguments that control the appearence and the title of the legends.
map.feature(circassian$language,
features = circassian$dialect,
stroke.features = circassian$language,
latitude = circassian$latitude,
longitude = circassian$longitude,
legend = FALSE, stroke.legend = TRUE)
map.feature(circassian$language,
features = circassian$dialect,
stroke.features = circassian$language,
latitude = circassian$latitude,
longitude = circassian$longitude,
title = "Circassian dialects", stroke.title = "Languages")
The arguments legend.position
and
stroke.legend.position
allow you to change a legend’s
position using “topright”, “bottomright”, “bottomleft” or”topleft”
strings.
A scale bar is automatically added to a map, but you can control its
appearance (set scale.bar
argument to TRUE
orFALSE
) and its position (use
scale.bar.position
argument values “topright”,
“bottomright”, “bottomleft” or”topleft”).
map.feature(c("Adyghe", "Polish", "Kabardian", "Russian"),
scale.bar= TRUE,
scale.bar.position = "topright")
It is possible to use different tiles on the same map using the
tile
argument. For more tiles see here.
<- data.frame(lang = c("Adyghe", "Kabardian", "Polish", "Russian", "Bulgarian"),
df feature = c("polysynthetic", "polysynthetic", "fusion", "fusion", "fusion"),
popup = c("Adyghe", "Adyghe", "Slavic", "Slavic", "Slavic"))
map.feature(df$lang, df$feature, df$popup,
tile = "Stamen.TonerLite")
It is possible to use different map tiles on the same map. Just add a vector with tiles.
map.feature(df$lang, df$feature, df$popup,
tile = c("OpenStreetMap", "Stamen.TonerLite"))
It is possible to name tiles using the tile.name
argument.
map.feature(df$lang, df$feature, df$popup,
tile = c("OpenStreetMap", "Stamen.TonerLite"),
tile.name = c("colored", "b & w"))
It is possible to combine the tiles’ control box with the features’ control box.
map.feature(df$lang, df$feature, df$popup,
tile = c("OpenStreetMap", "Stamen.TonerLite"),
control = TRUE)
It is possible to add a minimap to a map.
map.feature(c("Adyghe", "Polish", "Kabardian", "Russian"),
minimap = TRUE)
You can control its appearance (by setting the minimap
argument to TRUE
or FALSE
), its position (by
using the values “topright”, “bottomright”, “bottomleft” or”topleft” of
the minimap.position
argument) and its height and width
(with the arguments minimap.height
and
minimap.width
).
map.feature(c("Adyghe", "Polish", "Kabardian", "Russian"),
minimap = TRUE,
minimap.position = "topright",
minimap.height = 100,
minimap.width = 100)
This part is created using the beutifull leaflet.minicharts
library. The argument minichart
allows you to add
piecharts or barplots instead of standard point markers. In this part I
will use a build in data set phonological_profiles
that
contains 19 languages from UPSyD database. Here is an
example of barplot:
map.feature(languages = phonological_profiles$language,
minichart.data = phonological_profiles[, c("vowels", "consonants")])
Here is an example of piechart:
map.feature(languages = phonological_profiles$language,
minichart.data = phonological_profiles[, c("vowels", "consonants")],
minichart = "pie")
Colors and opacity could be changed, legend moved:
map.feature(languages = phonological_profiles$language,
minichart.data = phonological_profiles[, c("vowels", "consonants")],
color= c("yellowgreen", "navy"),
opacity = 0.7,
label = phonological_profiles$language,
legend.position = "topleft")
It is possible to add values using argument
minichart.labels
:
map.feature(languages = phonological_profiles$language,
minichart.data = phonological_profiles[, c("vowels", "consonants")],
minichart = "pie",
minichart.labels = TRUE)
It is also possible to use pie chart in non-convenient way: just
indicating with TRUE
or FALSE
of pressence of
some feature (thanks to Diana Forker for the task!):
map.feature(languages = phonological_profiles$language,
minichart.data = phonological_profiles[, c("tone", "long_vowels", "stress", "ejectives")],
minichart = "pie",
width = 3)
Unfortunately this kind of visualisation doesn’t work, when you have
some lines in your dataset that contain only FALSE
values.
This is non-convenient way of category visualisation,
so visualisation experts could have a negative opinion about it. This
kind of visualisation is also bad for huge number of variables.
It is possible to highlight some part of your map with a rectangle.
You need to provide a latitude and longitude of the diagonal
(rectangle.lat
and rectangel.lng
) and color of
the rectangle (rectangle.color
):
map.feature(circassian$language,
$language,
circassianlongitude = circassian$longitude,
latitude = circassian$latitude,
rectangle.lng = c(42.7, 45),
rectangle.lat = c(42.7, 44.4),
rectangle.color= "green")
Sometimes it is easier to look at a density contourplot. It can be
created using density.estimation
argument. There are two
possibility for creation a density contourplot in
lingtypology
:
density.method = "fixed distance"
. First algorithm
creates circle polygons with fixed radius around each point and then
merge all polygons that are overlapped. It has only one parameter that
should be estimated: radius of the circle
(density.width
).density.method = "kernal density estimation"
. Second
algorithm uses a kernal density estimation and has two parameters that
should be estimated: latitude and longitude bandwidths
(density.width[1]
and (density.width[2]
))map.feature(circassian$language,
longitude = circassian$longitude,
latitude = circassian$latitude,
density.estimation = circassian$language,
density.width = 0.15)
Density estimation plot can be separated by features
variable:
map.feature(circassian$language,
features = circassian$dialect,
longitude = circassian$longitude,
latitude = circassian$latitude,
density.estimation = circassian$language,
density.width = 0.15)
It is possible to remove points and display only the kernal density
estimation plot, using the density.points
argument:
map.feature(circassian$language,
longitude = circassian$longitude,
latitude = circassian$latitude,
density.estimation = circassian$language,
density.width = 0.15,
density.points = FALSE)
It is possible to change kernal density estimation plot opacity using
thedensity.estimation.opacity
argument:
map.feature(circassian$language,
longitude = circassian$longitude,
latitude = circassian$latitude,
density.estimation = circassian$language,
density.width = 0.15,
density.estimation.opacity = 0.2)
If you want to use kernal density estimation, you need to change method type and provide a vector of parameters that increase/decrease area:
map.feature(circassian$language,
features = circassian$language,
longitude = circassian$longitude,
latitude = circassian$latitude,
density.estimation = "Circassian",
density.method = "kernal density estimation",
density.width = c(0.3, 0.3),
color= c("darkgreen", "blue"))
map.feature(circassian$language,
features = circassian$language,
longitude = circassian$longitude,
latitude = circassian$latitude,
density.estimation = "Circassian",
density.method = "kernal density estimation",
density.width = c(0.7, 0.7),
color= c("darkgreen", "blue"))
map.feature(circassian$language,
features = circassian$language,
longitude = circassian$longitude,
latitude = circassian$latitude,
density.estimation = "Circassian",
density.method = "kernal density estimation",
density.width = c(1.3, 0.9),
color= c("darkgreen", "blue"))
It is important to note, that this type of visualization have some shortcomings. The kernel density estimation is calculated without any adjustment, so longitude and latitude values used as a values in Cartesian coordinate system. To reduce consequences of that solution it is better to use a different coordinate projection. That allows not to treat Earth as a flat object.
It is possible to try to catch isoglosses, using the kernel density
estimation algorithm. The map.feature
argument
isogloss
recieves a dataframe with set of features:
map.feature(languages = circassian$language,
latitude = circassian$latitude,
longitude = circassian$longitude,
features = circassian$dialect,
label = circassian$dialect,
legend = TRUE,
isogloss = as.data.frame(circassian[,"dialect"]),
isogloss.width = 0.15)
It is possible to create true isoglosses by hand, see tools for it here.
It is possible to show some lines on the map using coordinates
(line.lng
and line.lat
arguments).
map.feature(circassian$language,
features = circassian$language,
longitude = circassian$longitude,
latitude = circassian$latitude,
line.lng = c(39, 43),
line.lat = c(44.5, 43))
If there are more then two coordinates, multiple lines will appear.
It is also possible to change the color of the line using the
line.color
argument.
map.feature(circassian$language,
features = circassian$language,
longitude = circassian$longitude,
latitude = circassian$latitude,
line.lng = c(43, 39, 38.5),
line.lat = c(43, 44.5, 45),
line.color= "green")
If there are two levels in the features
variable, it is
possible to draw a boundary line between point clusters (the logistic
regression is used for calculation).
map.feature(circassian$language,
features = circassian$language,
longitude = circassian$longitude,
latitude = circassian$latitude,
line.type = "logit")
It is possible to add a graticule to a map.
map.feature(c("Russian", "Adyghe"),
graticule = 5)
ggplot
Some journals and book publishers are not happy with the resolution
of lingtypology
maps. In order to obtain maps with high
resolution in lingtypology
I need to implement multiple
things, and I only started this work. For now only this type of maps are
available:
ggmap.feature(phonological_profiles$language, phonological_profiles$ejectives)
ggmap.feature(phonological_profiles$language, phonological_profiles$consonants)
There will be more functionality in the future.