The following guide provides an introduction to using vosonSML, which is
available both on GitHub and CRAN. More
resources are available on the VOSON Lab website (vosonSML and training materials).
For a full list of functions, please refer to the reference
page. The companion package to vosonSML
is VOSON Dashboard, which
provides an R/Shiny graphical user interface for data collection (via
vosonSML
), network and text analysis.
To use vosonSML
, you first need to load it into the
session:
library(vosonSML)
There are three steps involved in data collection and network
creation using vosonSML
. These are:
Authenticate()
Collect()
Create()
and Graph()
The first step is to authorise access to the Twitter API. This
requires completion of an application and approval for Twitter
Developer access. Once the application has been approved then the
Twitter Developer Portal will become available and a new “Standalone
App” can be created. Creation of an app allows keys to be generated
through which software such as vosonSML
can access and
collect data from the Twitter v1.1 API.
vosonSML
is only concerned with reading Twitter data, so
a full range of typical third-party app user
or
bot
functions are not required. The ideal type of
authentication for read-only access is application
based
authentication with a bearer
token that can be generated
and found under the Authentication Tokens
section of a
developers app project on the Developer Portal. This type of token has
higher tweet collection rate-limits than other methods but less
permissions. With a bearer
token the Twitter authentication
object can be set as follows:
<- Authenticate("twitter", bearerToken = "xxxxxxxxxxxx") twitterAuth
A developer
access token can also be created by using
all of the developer keys generated for an app. This type of access is
suited to automated software such as bots
that are required
to undertake a range of read and write Twitter activities. A
developer
access token is not required for
vosonSML
but can be used if desired, it will however have
lower rate-limits than the bearer
token:
<- Authenticate(
twitterAuth "twitter",
appName = "My App",
apiKey = "xxxxxxxx",
apiSecret = "xxxxxxxx",
accessToken = "xxxxxxxx",
accessTokenSecret = "xxxxxxxx"
)
There is also a user
based access method available in
which a Twitter user can permit an app to access the API on their
behalf. This is the method third-party Twitter clients use to allow
users to perform Twitter functions such as posting tweets with their
software. When authorizing the software to their account the user will
be informed of the scope of permissions they are granting to the app.
This method has the advantage of per-user rather than application
rate-limits. This method is currently only available to be used with
vosonSML
if the user has access to an app
API key
and API secret
:
<- Authenticate(
twitterAuth "twitter",
appName = "An App",
apiKey = "xxxxxxxxxxxx",
apiSecret = "xxxxxxxxxxxx"
)
In all cases, Twitter authentication creates an authentication object with access token that can be re-used in the future by saving it to disk:
saveRDS(twitterAuth, file = "twitter_auth")
The following loads into the current session a previously-created authentication object:
<- readRDS("twitter_auth") twitterAuth
The syntax for collecting Twitter data follow Twitter’s rules and filtering documentation. It is possible to collect tweets including particular terms (e.g. hashtags), and boolean searches (see standard search operators) are also possible. The collection may be filtered by, for example, type of Twitter activity (e.g. to include retweets only), number of collected tweets, language of tweet. As an example, the following collects 1000 recent tweets containing the ‘#auspol’ hashtag (a prominent hashtag for Australian politics), with retweets not being collected.
<- twitterAuth |>
twitterData Collect(
searchTerm = "#auspol",
numTweets = 1000,
includeRetweets = FALSE,
writeToFile = TRUE,
verbose = TRUE
)
The Collect()
function takes the following arguments
(when used for collecting Twitter data): credential
(object
generated from Authenticate()
with class name
“twitter”(above we pass this via the pipe), searchTerm
(character string that specifies a Twitter search term),
searchType
(character string indicating how to filter
returned tweets with options ‘recent’, ‘mixed’ or ‘popular’; default
type is ‘recent’), numTweets
(numeric vector that specifies
how many tweets to be collected; default is 100),
includeRetweets
(whether the search should filter out
retweets or not; default is TRUE), retryOnRateLimit
(whether to automatically pause collection when the Twitter API rate
limit is reached, and then restart; default is FALSE.),
writeToFile
(whether to write the returned dataframe to
disk as an .rds
file; default is FALSE), and
verbose
(whether to output information about the data
collection; default is FALSE).
The Collect()
function returns a tibble (an enhanced
dataframe which has features that can make working with the data
easier). We can view the data we just collected (the following has been
modified to anonymise the data):
> twitterData$tweets
# A tibble: 999 x 90
user_id status_id created_at screen_name text source<chr> <chr> <dttm> <chr> <chr> <chr>
1 xxxxxx… xxxxxxxx… 2020-01-09 12:02:13 xxxx "htt… Twitt…
2 xxxxxx… xxxxxxxx… 2020-01-09 12:01:32 xxxxxxxxx "Fir… Twitt…
3 xxxxxx… xxxxxxxx… 2020-01-09 12:00:44 xxxxxxxxxxx "Ser… Twitt…
[snip]
… with 989 more rows, and 84 more variables: display_text_width <dbl>,
...
If you are reading a previously saved writeToFile
Twitter dataframe from disk, you simply need to use the
readRDS
function:
<- readRDS("2020-09-26_095354-TwitterData.rds") twitterData
As vosonSML
uses rtweet
for data collection
you can also import rtweet
tweet data from dataframe or
.RDS
file using ImportRtweet()
:
# from dataframe
<- rtweet::search_tweets("#auspol", n = 100)
tweets <- tweets |> ImportRtweet()
twitterData
# or from file
<- ImportRtweet("rtweet_search_n100.rds") twitterData
It is currently possible to create four types of networks using Twitter data: (1) actor network; (2) activity network; (3) 2-mode network and (4) semantic network.
In the Twitter actor network, nodes are users who have either tweeted using the target search terms (#auspol in the above example) or else are mentioned or replied to in tweets featuring the search terms. Edges represent interactions between Twitter users, and an edge attribute indicates whether the interaction is a mention, reply, retweet, quoted retweet or self-loop. Self-loop edges are created in two situations: (1) a user authors a tweet and mentions or replies to themself; (2) a user authors a tweet containing the search term, but does not mention or reply to any other user in that tweet.
<- twitterData |>
actorNetwork Create("actor", writeToFile = TRUE, verbose = TRUE)
<- actorNetwork |> Graph(writeToFile = TRUE, verbose = TRUE) actorGraph
Create("actor")
returns a named list containing two
dataframes named “nodes” and “edges” (the following has been modified to
preserve anonymity):
> actorNetwork
$edges
# A tibble: 1,725 x 5
from to edge_type timestamp status_id<fct> <fct> <fct> <fct> <fct>
1 xxxxxxxx xxxxxxxx quote 2020-01-09 12:00… xxxxxxxxxxxx…
2 xxxxxxxx xxxxxxxxx quote 2020-01-09 09:37… xxxxxxxxxxxx…
[snip]# … with 1,715 more rows
$nodes
# A tibble: 1,158 x 2
user_id screen_name<fct> <fct>
1 xxxxxxxx xxxx
2 xxxxxxxx xxxxxxxxx
[snip]# … with 1,148 more rows
attr(,"class")
1] "list" "network" "actor" "twitter" [
This list is then passed to Graph()
, which returns an
igraph
graph object, and in the above example, the
writeToFile
parameter is used to write the graph to file in
GraphML
format. The following shows a summary of the
graph:
> actorGraph
-- 1158 1725 --
IGRAPH bc177a6 DN+ attr: type (g/c), name (v/c), screen_name (v/c), label (v/c),
| edge_type (e/c), timestamp (e/c), status_id (e/c)
+ edges from bc177a6 (vertex names):
1] xxxxxxxx ->xxxxxxxx
[2] xxxxxxxx ->xxxxxxxxx
[
[snip]+ ... omitted several edges
The Twitter actor network contains a graph attribute
type
which is set to “twitter” (this attribute is required
for VOSON Dashboard
). The following node attributes are
collected from the Twitter profile data: name
(Twitter ID),
screen_name
(Twitter handle or screen name) and
label
(a concatenation of the ID and screen name). The edge
attributes are: edge_type
(whether the edge is a mention,
reply, retweet, quoted retweet or self-loop), timestamp
(when the tweet that led to the creation of the edge was authored) and
status_id
(the Twitter ID for the tweet).
The example actor network contains 1158 nodes and 1725 edges. The
following code uses igraph
functions to: (1) remove all
edges other than reply edges; (2) construct a subnetwork consisting of
the giant component (the largest set of connected nodes); (3) plot this
network.
library(igraph)
# remove edges that are not reply edges
<- delete.edges(actorGraph, which(E(actorGraph)$edge_type != "reply"))
g2
# get the giant component
<- clusters(g2)
cc <- induced_subgraph(g2, which(cc$membership == which.max(cc$csize)))
g2
# open and write plot to a png file
png("twitter_actor_reply_gc.png", width = 600, height = 600)
plot(g2, vertex.label = "", vertex.size = 4, edge.arrow.size = 0.5)
dev.off()
It is often useful to have the tweet text content in the network.
This can be achieved by using the status_id
edge attribute
to pull the tweet text content from the dataframe returned by
Collect()
, and store it as an edge attribute.
vosonSML
makes this easy with the AddText()
function, with the following example creating a graph with an edge
attribute vosonTxt_tweet
which stores the tweet text
content.
<- twitterData |>
actorGraphWithText Create("actor") |> AddText(twitterData) |> Graph()
Now we have tweet text content stored as an edge attribute, we can
use it for text analysis or creating new node attributes. As an example,
the following creates a new node attribute tweetedBushfires
which has the value “yes” if the Twitter user authored at least one
tweet containing the word “bushfire” and “no” otherwise.
# get the index of nodes or users who tweeted the word "bushfire"
<- tail_of(
ind
actorGraphWithText,grep("bushfire", tolower(E(actorGraphWithText)$vosonTxt_tweet))
)
# set node attribute
V(actorGraphWithText)$tweetedBushfires <- "no"
V(actorGraphWithText)$tweetedBushfires[ind] <- "yes"
The following creates and plots the giant component in the reply network, with red nodes indicating those users who tweeted using the term “bushfire”.
# remove edges that are not reply edges
<- delete.edges(
g3 which(E(actorGraphWithText)$edge_type != "reply")
actorGraphWithText,
)
# get the giant component
<- clusters(g3)
cc <- induced_subgraph(g3, which(cc$membership == which.max(cc$csize)))
g3
# set node colour based on tweeted bushfires attribute value
V(g3)$color <- ifelse(V(g3)$tweetedBushfires == "yes", "red", "grey")
# open and write plot to a png file
png("twitter_actor_reply_gc_bushfires.png", width = 600, height = 600)
plot(g3, vertex.label = "", vertex.size = 4, edge.arrow.size = 0.5)
dev.off()
The igraph
graph object can then be saved to disk as a
GraphML
file using the igraph
function
write.graph
, and later imported into network analysis
software such as igraph
, VOSON Dashboard
and
Gephi:
# save the graph as a graphml file
write.graph(g3, "twitter_reply_gc_bushfires.graphml", format = "graphml")
Finally, the AddUserData()
function can be used to
create additional node attributes from the Twitter profile, for example,
number of followers and number of tweets authored by the user.
Note that by default, vosonSML
will only collect Twitter
profile data for those users who authored tweets that have been
collected. That is, in the above example, profile data will not be
collected (by default) for a user who was mentioned in a tweet that
contained #auspol, but did not author such a tweet. The
lookupUsers
argument can be used to make additional Twitter
API calls and collect the profile data for mentioned users whose profile
data is absent, so that their additional profile attributes can also be
added:
# create an actor network with user metadata
<- actorNetwork |>
actorGraphWithUserAttr AddUserData(twitterData, lookupUsers = TRUE, twitterAuth = twitterAuth) |>
Graph(writeToFile = TRUE)
In the Twitter activity network, nodes represent tweets and edge types are: replies, retweets and quoted retweets.
# create an activity network with tweet text
<- twitterData |> Create("activity") |> AddText(twitterData)
activityNetwork <- activityNetwork |> Graph(writeToFile = TRUE) activityGraph
Create("activity")
returns a named list containing two
dataframes named “nodes” and “edges” (the following has been modified to
preserve anonymity):
> activityNetwork
$nodes
# A tibble: 1,408 x 5
status_id user_id screen_name created_at vosonTxt_tweet<chr> <chr> <chr> <chr> <chr>
1 xxxxxxxxxxx… xxxxxxxx xxxx 2020-01-09 … "xxxxxxxxxxxxxxxxxxxxx…
2 xxxxxxxxxxx… xxxxxxxx xxxxxxxxx 2020-01-09 … "xxxxxxxxxxxxxxxxxxxxx…
[snip]# … with 1,398 more rows
$edges
# A tibble: 662 x 3
from to edge_type<chr> <chr> <chr>
1 xxxxxxxxxxxxxxxxxxx xxxxxxxxxxxxxxxxxxx quote
2 xxxxxxxxxxxxxxxxxxx xxxxxxxxxxxxxxxxxxx quote
[snip]# … with 652 more rows
attr(,"class")
1] "list" "network" "activity" "twitter" "voson_text" [
Note that in the above, AddText()
was used to add the
comment text data to the network dataframe, stored as a node attribute.
This list is then passed to Graph()
, which returns an
igraph
graph object (the following has been
anonymised):
> activityGraph
-- 1408 662 --
IGRAPH e60c486 DN+ attr: type (g/c), name (v/c), user_id (v/c), screen_name (v/c),
| created_at (v/c), vosonTxt_tweet (v/c), label (v/c), edge_type (e/c)
+ edges from e60c486 (vertex names):
1] xxxx->xxxx
[2] xxxx->xxxx
[
[snip]+ ... omitted several edges
The Twitter activity network contains a graph attribute
type
(set to “twitter”). The node attributes are:
name
(Twitter ID for the tweet), user_id
(Twitter ID for the user who authored the tweet),
screen_name
(Twitter handle or screen name of the user who
authored the tweet), created_at
(timestamp when the tweet
was authored), vosonTxt_tweet
(text content of the tweet)
and label
(a concatenation of name
and
user_id
). The edge attribute is edge_type
which can have the value ‘reply’, ‘retweet’ or ‘quote’.
The example Twitter activity network contains 1408 nodes and 662 edges. The following is a visualization of the network, where nodes are tweets and tweets mentioning bushfires are indicated in red.
# create a subgraph containing nodes of components that have more than 5 nodes
<- clusters(activityGraph)
cc <- induced_subgraph(
g4
activityGraph,which(cc$membership %in% which(cc$csize > 5))
)
# set node colour based on if tweet contains the word "bushfire"
<- grep("bushfire", tolower(V(g4)$vosonTxt_tweet))
ind V(g4)$color <- "grey"
V(g4)$color[ind] <- "red"
# open and write plot to a png file
png("twitter_activity.png", width = 600, height = 600)
plot(g4, vertex.label = "", vertex.size = 4, edge.arrow.size = 0.5)
dev.off()
It should be noted that a limitation of the Twitter API is that retweet chains are not provided. This means that if user i tweeted an original tweet, and then user j retweeted this tweet, and user k retweeted j’s retweet, the activity network will show edges connecting the two retweets to the original tweet.
In the Twitter 2-mode network, the two types of nodes are actors (Twitter users) and hashtags. There is an edge from user i to hashtag j if user i authored a tweet containing hashtag j.
# requires the tidytext package for tokenizing text
install.packages("tidytext")
# create a 2-mode network with the hashtag "#auspol" removed
<- twitterData |>
twomodeNetwork Create("twomode", removeTermsOrHashtags = c("#auspol"))
<- twomodeNetwork |> Graph() twomodeGraph
Create("twomode")
returns a named list containing two
dataframes named “nodes” and “edges” (the following has been modified to
preserve anonymity). Note that in this example, the
removeTermsOrHashtags
argument was used to exclude
‘#auspol’, since by construction all tweets contained this hashtag.
> twomodeNetwork
$nodes
# A tibble: 1,146 x 2
entity_id display_name<chr> <chr>
1 xxxxxxxx xxxx
2 xxxxxxxx xxxxxxxxx
3 #auspol2020 #auspol2020
4 #australianbushfiredisaster #australianbushfiredisaster
[snip]# … with 1,136 more rows
$edges
# A tibble: 1,675 x 5
from to edge_type timestamp status_id<fct> <fct> <fct> <fct> <fct>
1 xxxxxxxx #auspol2020 hashtag 2020-01-09 12:0… xxxxxxxxxxxx…
2 xxxxxxxx #australianbushfiredis… hashtag 2020-01-09 12:0… xxxxxxxxxxxx…
[snip]# … with 1,665 more rows
attr(,"class")
1] "list" "network" "twomode" "twitter" [
This list is then passed to Graph()
, which returns an
igraph
graph object (this has been anonymised):
> twomodeGraph
-- 1146 1675 --
IGRAPH 68bd240 DN+ attr: type (g/c), name (v/c), display_name (v/c), label (v/c),
| edge_type (e/c), timestamp (e/c), status_id (e/c)
+ edges from 68bd240 (vertex names):
1] xxxx -> #auspol2020
[2] xxxx -> #australianbushfiredisaster
[
[snip]+ ... omitted several edges
The Twitter 2-model network has a graph attribute type
(set to “twitter”). The node attributes are: name
(hashtag
or Twitter user ID), display_name
(hashtag or Twitter
handle or screen name), label
(for users, a concatenation
of name
and display_name
, while for hashtags
it is name
). The edge attributes are:
edge_type
(‘hashtag’), timestamp
(timestamp of
the tweet that led to the edge), status_id
(Twitter ID of
the tweet that led to the edge).
# get index of nodes that are in the top 5 by highest in-degree
# this is the top 5 used hashtags, as all users have 0 in-degree
# in this network
<- order(degree(twomodeGraph, mode = "in"), decreasing = TRUE)[1:5]
ind
# get index of nodes with an edge directed to the top 5 hashtags
# this is users who have tweeted with these hashtags
<- unlist(
ind2 lapply(ind, function(x) neighbors(twomodeGraph, x, mode = "in"))
)
# create a subgraph containing only the top 5 used hashtags and related users
<- induced_subgraph(twomodeGraph, c(ind, as.numeric(ind2)))
g5
# set node colour and label based on in-degree
# only hashtag nodes are set to blue and with label attribute set
V(g5)$color <- "grey"
V(g5)$color[which(degree(g5, mode = "in") > 0)] <- "blue"
V(g5)$label2 <- ifelse(degree(g5, mode = "in") > 0, V(g5)$label, "")
# open and write plot to a png file
png("twitter_twomode.png", width = 600, height = 600)
plot(g5, vertex.label = V(g5)$label2, vertex.size = 4, edge.arrow.size = 0.5,
vertex.label.cex = 1.8, vertex.label.color = "red")
dev.off()
In the Twitter semantic network, nodes represent entities extracted from the tweet text: common words, hashtags and usernames. Edges reflect co-occurrence i.e. there is an edge between entities i and j if they both occurred in the same tweet.
# additional required packages for tokenization and stopwords
install.packages(c("tidytext", "stopwords"))
# create a semantic network with some common terms removed
# include only the top 5% occurring terms in the network
<- twitterData |> Create(
semanticNetwork "semantic",
removeTermsOrHashtags = c("#auspol", "auspol", "australia"),
termFreq = 5
)
# create an undirected graph
<- semanticNetwork |> Graph(directed = FALSE) semanticGraph
Create("semantic")
returns a named list containing two
dataframes named “nodes” and “edges”:
> semanticNetwork
$nodes
# A tibble: 799 x 1
value<fct>
1 just
2 one
3 fire
4 going
5 still
6 hard
7 trying
8 since
9 try
10 sick
# … with 789 more rows
$edges
# A tibble: 10,990 x 3
from to weight<fct> <fct> <int>
1 #auspol2020 #australianbushfiredisaster 2
2 #auspol2020 government 2
3 #auspol2020 fire 4
4 #auspol2020 australian 2
5 #auspol2020 bushfire 2
6 #auspol2020 fires 4
7 #auspol2020 #australiafires 1
8 #auspol2020 #australianbushfiresdisaster 1
9 #auspol2020 #australia 4
10 #auspol2020 bushfires 2
# … with 10,980 more rows
attr(,"class")
1] "list" "network" "semantic" "twitter" [
The removeTermsOrHashtags
argument is used to exclude
terms that we can expect to occur frequently (e.g. because of the
parameters used for the data collection). The termFreq
parameter is used to limit the network to the top 5 percent most
frequently occurring entities.
This list is then passed to Graph()
, which returns an
igraph
graph object:
> semanticGraph
- 799 10990 --
IGRAPH cb8c381 UNW+ attr: type (g/c), name (v/c), label (v/c), weight (e/n)
+ edges from cb8c381 (vertex names):
1] #australianbushfiredisaster --#auspol2020
[2] government --#auspol2020
[3] fire --#auspol2020
[4] australian --#auspol2020
[5] bushfire --#auspol2020
[6] fires --#auspol2020
[7] #australiafires --#auspol2020
[8] #australianbushfiresdisaster--#auspol2020
[+ ... omitted several edges
The Twitter semantic network node contains a graph attribute
type
(set to “twitter”). The node attributes are:
name
(the entity i.e. hashtag or word), label
(same as name
). The edge attribute is weight
(how many tweets the two entities co-occurred in).
The example Twitter semantic network has 799 nodes and 10990 edges. The following produces a visualisation of subnetwork of terms that contain the string “bushfire”:
# get index of the nodes whose term contains "bushfire"
<- grep("bushfire", tolower(V(semanticGraph)$name))
ind
# create a subgraph containing only bushfire terms
<- induced_subgraph(semanticGraph, ind)
g6
# open and write plot to a png file
# plotted with large-graph-layout algorithm and edge weights
png("twitter_semantic.png", width = 600, height = 600)
plot(g6, layout = layout_with_lgl(g6), vertex.shape = "none", vertex.size = 4,
edge.width = 1 + log(E(g2)$weight))
dev.off()
To collect YouTube data, it is necessary to first create a Google app
with access to the YouTube Data API via the Google APIs
console and generate an associated API key. The following shows the
creation of a YouTube access token by passing a Google developer API key
to the Autnenticate()
function:
# create auth object with api key
<- Authenticate("youtube", apiKey = "xxxxxxxx") youtubeAuth
As with the Twitter example above, the YouTube access token can optionally be saved to disk for use in a later session.
The YouTube video IDs (the part after “=” in the YouTube URL) are required in order to collect YouTube comment data. These IDs can either be manually provided or automatically extracted from the URLs:
<- c(
videoIDs "xxxxxx",
"https://www.youtube.com/watch?v=xxxxxxxx",
"https://youtu.be/xxxxxxxx")
)
The character vector containing the YouTube video IDs or URLs is
passed as a parameter to the Collect()
function (the
following code also shows the YouTube access token being piped to
Collect()
). In the following example, we are collecting
comments from a YouTube video titled “Australia bushfires - a national
catastrophe | DW News”, which was uploaded by the German Deutsche Welle
news service on 5th January 2020. The comment data were collected on
10th January 2020: the total number of comments at that time was over
1100, but we are using the maxComments
parameter to collect
a maximum of 500 top-level comments (and all the reply comments to these
top-level comments).
<- "https://www.youtube.com/watch?v=pJ_NyEYRkLQ"
videoID <- youtubeAuth |>
youtubeData Collect(videoID, maxComments = 500, writeToFile = TRUE)
The Collect()
function takes the following arguments
(when used for collecting YouTube data): credential
(object
generated from Authenticate()
with class name “youtube”
(above we pass this via the pipe), videoIDs
(character
vector specifying one or more youtube video IDs),
maxComments
(numeric integer specifying how many top-level
comments to collect from each video), writeToFile
(whether
to write the returned dataframe to disk as an .rds
file;
default is FALSE), and verbose
(whether to output
information about the data collection; default is FALSE).
Collect()
returns an R dataframe with the following
structure (data have been modified to preserve anonymity):
> str(youtubeData)
'data.frame': 603 obs. of 12 variables:
Classes ‘dataource’, ‘youtube’ and $ Comment : chr "xxxxx"
$ AuthorDisplayName : chr "xx" "xx" "xx" "xx"
$ AuthorProfileImageUrl: chr "https://xx" "https://xx" "https://xx"
$ AuthorChannelUrl : chr "http://xx" "http://xx" "http://xx" "http://xx"
$ AuthorChannelID : chr "xx" "xx" "xx" "xx"
$ ReplyCount : chr "0" "0" "0" "0"
$ LikeCount : chr "0" "0" "0" "0"
$ PublishedAt : chr "2020-01-10T02:23:43" "2020-01-09T20:56:23"
"2020-01-09T20:44:00" "2020-01-09T19:31:32"
$ UpdatedAt : chr "2020-01-10T02:23:43" "2020-01-09T20:56:23"
"2020-01-09T20:44:00" "2020-01-09T19:31:32"
$ CommentID : chr "xx" "xx" "xx" "xx"
$ ParentID : chr NA NA NA NA
$ VideoID : chr "pJ_NyLQ" "pJ_NyLQ" "pJ_NyLQ" "pJ_NyLQ"
If you are reading a previously saved writeToFile
YouTube dataframe from disk, you simply need to use the
readRDS
function:
# read dataframe from file
<- readRDS("2020-09-26_095354-YoutubeData.rds") youtubeData
It is currently possible to create two types of networks using YouTube data: (1) actor network and (2) activity network.
In the YouTube actor network the nodes are users who have commented on videos (and the videos themselves are included in the network as special nodes) and the edges are the interactions between users in the comments. We can distinguish a top-level comment, which is a comment that is directed to a video from a reply comment, which is a comment directed to a top-level comment. The YouTube user interface does not allow a user to direct a reply to another reply. However, users can achieve the “reply to a reply” functionality by starting their comment with the username of the person that they are replying to (and they often prepend the username with “@”). So there will be an edge from user i to user j if i replied to a top-level comment authored by j or else i prepended their comment with j’s username.
<- youtubeData |> Create("actor") |> AddText(youtubeData)
actorNetwork <- actorNetwork |> Graph(writeToFile = TRUE) actorGraph
Create("actor")
returns a named list containing two
dataframes named “nodes” and “edges” (the following has been modified to
preserve anonymity):
> actorNetwork
$nodes
# A tibble: 522 x 3
id screen_name node_type<chr> <chr> <chr>
1 xxxxxxxxxxxxxxxxxxxxxxxxx xxxxxxxxxxxxxx actor
2 xxxxxxxxxxxxxxxxxxxxxxxxx xxxxxxxxxxxxx actor
[snip]# … with 512 more rows
$edges
# A tibble: 604 x 6
from to video_id comment_id edge_type vosonTxt_comment<chr> <chr> <chr> <chr> <chr> <chr>
1 xxxxxxxx… VIDEOID… pJ_NyEY… xxxxxxxxxxx… comment "xxxxx"
2 xxxxxxxx… VIDEOID… pJ_NyEY… xxxxxxxxxxx… comment "xxxxx"
[snip]# … with 594 more rows
attr(,"class")
1] "list" "network" "actor" "youtube" "voson_text" [
Note that in the above, AddText()
was used to add the
comment text data to the network dataframe, stored as an edge attribute.
Also, note that there is an optional parameter
replies_from_text
that can be passed to
AddText()
when used with YouTube network creation, to
extract the “reply to reply” comments.
This list is then passed to Graph()
, which returns an
igraph
graph object. Remember that it is possible to
achieve the above using a single line of code:
<- youtubeData |> Create("actor") |> AddText(youtubeData) |> Graph() actorGraph
The following is an an annonymised summary of the igraph
graph object.
> actorGraph
79e5456 DN-- 522 604 --
IGRAPH + attr: type (g/c), name (v/c), screen_name (v/c), node_type (v/c),
| label (v/c), video_id (e/c), comment_id (e/c), edge_type (e/c),
| vosonTxt_comment (e/c)
+ edges from 79e5456 (vertex names):
1] xxxx->VIDEOID:pJ_NyEYRkLQ
[2] xxxx->VIDEOID:pJ_NyEYRkLQ
[
[snip]+ ... omitted several edges
The YouTube actor network node contains a graph attribute
type
(set to “youtube”). The node attributes are:
name
(Channel ID, which is YouTube’s unique user ID),
screen_name
(the users displayed name),
node_type
(‘actor’ or ‘video’) and label
(a
concatenation of the ID and screen name). The edge attributes are:
video_id
(the ID of the video for which the data have been
collected), comment_id
(the ID of the comment),
edge_type
(whether the edge is a ‘comment’ i.e. top-level
comment, ‘reply-comment’ i.e. reply to top-level comment or reply to
reply or ‘self-loop’, which is a special edge connecting the video to
itself, as a means of including text posted with the video). In the
above example, because of our earlier use of AddText()
,
there is also an edge attribute vosonTxt_comment
which is
the text associated with the comment, reply or video.
The example YouTube actor network contains 522 nodes and 604 edges.
The following indicates that there were 500 top-level comments (we
constrained the collection to this number), 103 replies to top-level
comments (note: we did not use AddText()
to collect replies
embedded within the text), and there is the single self-loop from the
video to itself.
> table(E(actorGraph)$edge_type)
-comment self-loop
comment reply500 103 1
We can visualize this network, using red to identify the video nodes.
# change color of nodes with type video to red and others grey
V(actorGraph)$color <- ifelse(
V(actorGraph)$node_type == "video", "red", "grey"
)
# open and write plot to a png file
png("youtube_actor.png", width = 600, height = 600)
plot(actorGraph, vertex.label = "", vertex.size = 4, edge.arrow.size = 0.5)
dev.off()
The following creates a sub-network containing only the replies to top-level comments. In removing the other edges (top-level comments and the self-loop) we create a number isolate nodes (nodes with no connections) that we also remove. We have also used red to indicate the people who have written comments containing particular terms that have been present in the online commentary about the bushfires.
# removed edges that are not of type reply-comment
<- delete.edges(
g2 which(E(actorGraph)$edge_type != "reply-comment")
actorGraph,
)
# check number of isolates
> length(which(degree(g2) == 0))
1] 417
[
# remove isolates
<- delete.vertices(g2, which(degree(g2) == 0))
g2
# get node indexes for the tails of edges that have comments containing
# words of interest change the indexed node colors to red and others grey
V(g2)$color <- "grey"
<- tail_of(
ind
actorGraph,grep("arson|backburn|climate change", tolower(E(g2)$vosonTxt_comment))
)V(g2)$color[ind] <- "red"
# open and write plot to a png file
png("youtube_actor_reply.png", width = 600, height = 600)
plot(g2, vertex.label = "", vertex.size = 4, edge.arrow.size = 0.5)
dev.off()
Finally, the AddVideoData()
function supplements the
network data with additional video information.
<- actorNetwork |> AddVideoData(youtubeAuth) actorNetwork_withVideoInfo
AddVideoData()
returns a named list containing three
dataframes named “nodes” (identical to the dataframe contained in the
list actorNetwork
in the example able), “edges” (this has
three additional columns: “video_title”, “video_description”,
“video_published_at”) and a new dataframe “videos” (the following has
been modified to preserve anonymity):
> actorNetwork_withVideoInfo
$nodes
# A tibble: 522 x 3
id screen_name node_type<chr> <chr> <chr>
1 xxxxxxxxxxxxxxxxxxxxxxxx xxxxxxxxxxxxx actor
2 xxxxxxxxxxxxxxxxxxxxxxxx xxxxxxxxxxxxx actor
[snip]# … with 512 more rows
$edges
# A tibble: 604 x 9
from to video_id comment_id edge_type vosonTxt_comment video_title<chr> <chr> <chr> <chr> <chr> <chr> <chr>
1 xxxx… xxxx… pJ_NyEY… xxxxxxxxx… comment xxxxxxxxxxxx … Australia …
2 xxxx… xxxx… pJ_NyEY… xxxxxxxxx… comment "xxxx" Australia …
[snip]# … with 594 more rows, and 2 more variables: video_description <chr>,
# video_published_at <chr>
$videos
# A tibble: 1 x 6
VideoID VideoTitle VideoDescription VideoPublishedAt ChannelID ChannelTitle<chr> <chr> <chr> <chr> <chr> <chr>
1 pJ_NyEY… Australia … "As Australia ba… 2020-01-05T12:3… UCknLrEd… DW News
attr(,"class")
[1] "list" "network" "actor" "youtube"
[5] "voson_text" "voson_video_data"
It should also be noted that AddVideoData()
can
optionally substitute references to the video ID in the “nodes” and
“edges” dataframes with the video publishers channel ID (this is done by
setting the parameter actorSubOnly
to TRUE.
In the YouTube activity network, nodes are either comments or videos (videos represent a starting comment).
<- youtubeData |> Create("activity") |> AddText(youtubeData)
activityNetwork <- activityNetwork |> Graph() activityGraph
Create("activity")
returns a named list containing two
dataframes named “nodes” and “edges” (the following has been modified to
preserve anonymity).
> activityNetwork
$edges
# A tibble: 603 x 3
from to edge_type<chr> <chr> <chr>
1 xxxxxxxxxxxxxxxxxxxxxxxxxx VIDEOID:pJ_NyEYRkLQ comment
2 xxxxxxxxxxxxxxxxxxxxxxxxxx VIDEOID:pJ_NyEYRkLQ comment
[snip]# … with 593 more rows
$nodes
# A tibble: 604 x 8
id video_id published_at updated_at author_id screen_name node_type<chr> <chr> <chr> <chr> <chr> <chr> <chr>
1 xxxx… pJ_NyEY… 2020-01-10T… 2020-01-1… xxxxxxxx… xxxxxxxxxx… comment
2 xxxx… pJ_NyEY… 2020-01-09T… 2020-01-0… xxxxxxxx… xxxxxxxxxx… comment
[snip]# … with 594 more rows, and 1 more variable: vosonTxt_comment <chr>
attr(,"class")
1] "list" "network" "activity" "youtube" "voson_text" [
Note that in the above, AddText()
was used to add the
comment text data to the network dataframe, stored as a node attribute.
This list is then passed to Graph()
, which returns an
igraph
graph object (this has been anonymised).
-- 604 603 --
IGRAPH 02664d1 DN+ attr: type (g/c), name (v/c), video_id (v/c), published_at (v/c),
| updated_at (v/c), author_id (v/c), screen_name (v/c), node_type
| (v/c), vosonTxt_comment (v/c), label (v/c), edge_type (e/c)
+ edges from 02664d1 (vertex names):
1] xxxx->VIDEOID:pJ_NyEYRkLQ
[2] xxxx->VIDEOID:pJ_NyEYRkLQ
[3] xxxx->VIDEOID:pJ_NyEYRkLQ
[4] xxxx->VIDEOID:pJ_NyEYRkLQ
[5] xxxx->VIDEOID:pJ_NyEYRkLQ
[6] xxxx->VIDEOID:pJ_NyEYRkLQ
[+ ... omitted several edges
The YouTube activity network contains a graph attribute
type
(set to “youtube”). The node attributes are:
name
(character string ID number for the comment or video),
video_id
(character string ID of the video for which the
comments collected - in this example, “pJ_NyEYRkLQ”),
published_at
(timestamp of when the comment was published,
this is NA
for the video itself), updated_at
(timestamp of when a comment was updated), author_id
(user’s Channel ID), screen_name
(user’s display name),
node_type
(whether the node is a ‘comment’ i.e. top-level
comment, ‘reply-comment’ i.e. reply to top-level comment or reply to
reply or ‘video’), vosonText_comment
(the comment text,
NA
for the video), label
(concatenation of
name
and screen_name
). The edge attributes
edge_type
which is ‘comment’ for all edges connecting a
top-level comment to the video, and ‘reply-comment’ for all other
edges.
The example YouTube activity network contains 604 nodes and 603
edges. The following is an igraph
visualization of the
network, where the video is indicated by a red node, and blue indicates
comments that include one of the following terms: “arson”, “bakcburn”,
“climate change”.
# set all video node colors to red and others to grey
V(activityGraph)$color <- "grey"
V(activityGraph)$color[which(V(activityGraph)$node_type == "video")] <- "red"
# get node indexes of comments that contain terms of interest
# set their node colors to blue
<- grep(
ind "arson|backburn|climate change", tolower(V(activityGraph)$vosonTxt_comment)
)V(activityGraph)$color[ind] <- "blue"
# open and write plot to a png file
png("youtube_activity.png", width = 600, height = 600)
plot(activityGraph, vertex.label = "", vertex.size = 4, edge.arrow.size = 0.5)
dev.off()
The Reddit collection in vosonSML
is based on the
approach used in the RedditExtractoR
package.
The vosonSML
does not require Reddit API credentials to
be provided. However, to keep the workflow consistent with the other
data sources, we still need to create a “dummy” access token, using the
Authenticate()
function (see below).
To collect Reddit comment data, first construct a character vector containing the post URL(s).
<- c(
myThreadUrls "https://www.reddit.com/r/xxxxxx/comments/xxxxxx/x_xxxx_xxxxxxxxx/",
"https://www.reddit.com/r/xxxxxx/comments/xxxxxx/x_xxxx_xxxxxxxxx/"
)
This character vector is then passed as an argument to the
Collect()
function. In the example below, a post relating
to the politics around the Australian bushfires was used: https://www.reddit.com/r/worldnews/comments/elcb9b/australias_leaders_deny_link_between_climate/.
This post was created on 7th January 2020 and by the time of data
collection (10th January), it had attracted over 4000 comments. The
maximum number of comments available for retrieval is 500 per thread or
post.
Reddit has implemented a feature in their latest site re-design to
branch off into new threads, when a thread reaches a breadth (diameter)
of 10 comments. These appear as ‘Continue this thread’ links in thread
discussions on the reddit site, and as new listing markers within the
collected thread data. vosonSML
follows these links with
additional thread requests and collects comments from those as well,
capturing a more complete data set, as the limit of 500 comments applies
to each ‘new’ thread.
<- "https://www.reddit.com/r/worldnews/comments/elcb9b/australias_leaders_deny_link_between_climate/"
myThreadUrls <- Authenticate("reddit") |>
redditData Collect(threadUrls = myThreadUrls, writeToFile = TRUE)
The Collect()
function takes the following arguments
(when used for collecting Reddit data): credential
(an
object generated from Authenticate()
with class name
“reddit” (above we pass this via the pipe), threadUrls
(character vector of Reddit thread urls), waitTime
(a
numeric vector giving the time range in seconds to select random wait
url collection requests; default is c(3, 10)
i.e. random
wait between 3 and 10 seconds), ua
(User-Agent string;
default is option("HTTPUserAgent")
as set by vosonSML,
writeToFile
(whether to write the returned dataframe to
file as an .rds
file; default is FALSE),
verbose
(whether to output information about the data
collection; default is TRUE).
The Collect()
function returns a tibble
dataframe (this output has been anonymised):
> str(redditData)
'data.frame':
Classes ‘tbl_df’, ‘tbl’, ‘datasource’, ‘reddit’ and 767 obs. of 22 variables:
$ id : int 1 2 3 4 5 6 7 8 9 10 ...
$ structure : chr "1" "4_1_1_1_1_1_1_1_1_1" "4_1_1_4_2_1_1_1_1_1" ...
$ post_date : chr "2020-01-07 14:34:58" "2020-01-07 14:34:58" ...
$ post_date_unix : num 1.58e+09 1.58e+09 1.58e+09 1.58e+09 1.58e+09 ...
$ comm_id : chr "xxxx" "xxxx" "xxxx" "xxxx" ...
$ comm_date : chr "2020-01-07 19:11:10" "2020-01-07 21:04:05" ...
$ comm_date_unix : num 1.58e+09 1.58e+09 1.58e+09 1.58e+09 1.58e+09 ...
$ num_comments : int 4435 4435 4435 4435 4435 4435 4435 4435 4435 4435 ...
$ subreddit : chr "worldnews" "worldnews" "worldnews" "worldnews" ...
$ upvote_prop : num 0.91 0.91 0.91 0.91 0.91 0.91 0.91 0.91 0.91 0.91 ...
$ post_score : int 45714 45714 45714 45712 45714 45710 45720 45712 ..
$ author : chr "xxxx" "xxxx" "xxxx" "xxxx" ...
$ user : chr "xxxx" "xxxx" "xxxx" "xxxx" ...
$ comment_score : int 1904 136 17 13 9 9 125 4 6 12 ...
$ controversiality: int 0 0 0 0 0 0 0 0 0 0 ...
$ comment : chr "xxxx...
$ title : chr "Australia’s leaders deny link between climate change and the country’s devastating bushfires" "Australia’s leaders deny link between climate change and the country’s devastating bushfires" "Australia’s leaders deny link between climate change and the country’s devastating bushfires" "Australia’s leaders deny link between climate change and the country’s devastating bushfires" ...
$ post_text : chr "" "" "" "" ...
$ link : chr "https://www.theglobeandmail.com/world/article-australias-leaders-unmoved-on-climate-action-after-devastating-2/" "https://www.theglobeandmail.com/world/article-australias-leaders-unmoved-on-climate-action-after-devastating-2/" "https://www.theglobeandmail.com/world/article-australias-leaders-unmoved-on-climate-action-after-devastating-2/" "https://www.theglobeandmail.com/world/article-australias-leaders-unmoved-on-climate-action-after-devastating-2/" ...
$ domain : chr "theglobeandmail.com" "theglobeandmail.com" "theglobeandmail.com" "theglobeandmail.com" ...
$ url : chr "https://www.reddit.com/r/worldnews/comments/elcb9b/australias_leaders_deny_link_between_climate/" "https://www.reddit.com/r/worldnews/comments/elcb9b/australias_leaders_deny_link_between_climate/" "https://www.reddit.com/r/worldnews/comments/elcb9b/australias_leaders_deny_link_between_climate/" "https://www.reddit.com/r/worldnews/comments/elcb9b/australias_leaders_deny_link_between_climate/" ...
$ thread_id : chr "elcb9b" "elcb9b" "elcb9b" "elcb9b" ...
If you are reading a previously saved writeToFile
Reddit
dataframe from disk, you simply need to use the readRDS
function.
<- readRDS("2020-09-26_095354-RedditData.rds") redditData
It is currently possible to create two types of networks using Reddit data: (1) actor network and (2) activity network.
In the Reddit actor network, nodes represent users who have posted original posts and comments and the edges are the interactions between users in the comments i.e. where there is an edge from user i to user j if i writes a comment that replies to user j’s comment (or the original post).
The following creates a Reddit actor network with comment text as an edge attribute (as above, this can be achieved in a single line of code, but we split it into two lines to better explain the objects that are created).
<- redditData |> Create("actor") |> AddText(redditData)
actorNetwork <- actorNetwork |> Graph(writeToFile = TRUE) actorGraph
Create("actor")
returns a named list containing two
dataframes named “nodes” and “edges” (the following has been modified to
preserve anonymity):
> actorNetwork
$nodes
# A tibble: 439 x 2
id user<int> <chr>
1 1 xxxxxxxxxx
2 2 xxxxxxxxxxxxxx
[snip]# … with 429 more rows
$edges
# A tibble: 768 x 8
from to subreddit thread_id comment_id comm_id vosonTxt_comment title<int> <int> <chr> <chr> <dbl> <chr> <chr> <chr>
1 1 439 worldnews elcb9b 1 xxxxxxx "xxxxxxxxxxxxxxxxxxx NA
2 2 73 worldnews elcb9b 2 xxxxxxx "xxxxxxxxxxxxxxxxxxx NA
[snip]758 more rows
… with
attr(,"class")
1] "list" "network" "actor" "reddit" "voson_text" [
Note that in the above, AddText()
was used to add the
comment text data to the network dataframe, stored as an edge attribute.
This list is then passed to Graph()
, which returns an
igraph
graph object.
> actorGraph
-- 439 768 --
IGRAPH 5a5d5b9 DN+ attr: type (g/c), name (v/c), user (v/c), label (v/c), subreddit
| (e/c), thread_id (e/c), comment_id (e/n), comm_id (e/c),
| vosonTxt_comment (e/c), title (e/c)
+ edges from 5a5d5b9 (vertex names):
1] 1 ->439 2 ->73 3 ->113 4 ->120 5 ->120 6 ->17 7 ->194 8 ->20 9 ->20
[10] 10->165 11->165 12->1 13->2 14->3 15->4 16->5 17->6 18->7
[19] 19->8 20->9 21->10 22->11 23->12 2 ->13 24->3 7 ->18 25->23
[28] 26->2 3 ->24 27->18 28->1 29->2 18->27 1 ->28 30->2 31->7
[37] 25->1 32->2 33->31 34->1 2 ->32 35->7 25->34 36->2 7 ->35
[46] 37->1 38->2 39->7 40->1 41->2 42->7 43->1 2 ->41 44->7
[+ ... omitted several edges
The Reddit actor network contains a graph attribute type
(set to “reddit”). The node attributes are: name
(sequential ID number for actor, generated by vosonSML
),
user
(Reddit handle or screen name)) and label
(a concatenation of the ID and screen name). The edge attributes are:
subreddit
(the subreddit from which the post is collected),
thread_id
(the 6 character ID of the thread or post),
comment_id
(sequential ID number for comment, generated by
vosonSML
). There is also an edge attribute
title
, which is set to NA
for all comments
except the comment representing the original post. Further note that the
original post is represented as a self-loop edge from the user who
authored the post (and this is how the post text can be accessed, as an
edge attribute), however with the Reddit actor network, there is no
edge_type
attribute. Finally, because we used
AddText()
in the above example, there is also an edge
attribute vosonTxt_comment
which is the text associated
with the comment, or original post.
The example Reddit actor network contains 439 nodes and 768 edges. The following is a visualization of the actor network, where the author of the post is indicated by a red node, and blue nodes indicate those people who mentioned “arson” or “starting fires” in at least one of their comments.
# set node color of original post to red based on presence of title edge
# attribute set other node colors to grey
V(actorGraph)$color <- "grey"
V(actorGraph)$color[tail_of(
which(!is.na(E(actorGraph)$title))
actorGraph, <- "red"
)]
# get node indexes for the tails of edges that have comments containing
# words of interest set their node colors to blue
<- tail_of(
ind
actorGraph,grep("arson|starting fires",
tolower(E(actorGraph)$vosonTxt_comment))
)V(actorGraph)$color[ind] <- "blue"
# open and write plot to a png file
png("reddit_actor.png", width = 600, height = 600)
plot(actorGraph, vertex.label = "", vertex.size = 4, edge.arrow.size = 0.5)
dev.off()
In the Reddit activity network, nodes are either comments and/or initial thread posts and the edges represent replies to the original post, or replies to comments.
<- redditData |> Create("activity") |> AddText(redditData)
activityNetwork <- activityNetwork |> Graph(writeToFile = TRUE) activityGraph
Create("activity")
returns a named list containing two
dataframes named “nodes” and “edges” (the following has been modified to
preserve anonymity):
> activityNetwork
$nodes
# A tibble: 768 x 10
id thread_id comm_id datetime ts subreddit user node_type<chr> <chr> <chr> <chr> <dbl> <chr> <chr> <chr>
1 elcb… elcb9b xxxxxxx 2020-01… 1.58e9 worldnews xxxx… comment
2 elcb… elcb9b xxxxxxx 2020-01… 1.58e9 worldnews xxxx… comment
[snip]# … with 758 more rows, and 2 more variables: vosonTxt_comment <chr>,
# title <chr>
$edges
# A tibble: 767 x 3
from to edge_type<chr> <chr> <chr>
1 elcb9b.1 elcb9b.0 comment
2 elcb9b.4_1_1_1_1_1_1_1_1_1 elcb9b.4_1_1_1_1_1_1_1_1 comment
[snip]# … with 757 more rows
attr(,"class")
1] "list" "network" "activity" "reddit" "voson_text" [
Note that in the above, AddText()
was used to add the
comment text data to the network dataframe, stored as a node attribute.
This list is then passed to Graph()
, which returns an
igraph
graph object.
> activityGraph
09e30ea DN-- 768 767 --
IGRAPH + attr: type (g/c), name (v/c), thread_id (v/c), comm_id (v/c),
| datetime (v/c), ts (v/n), subreddit (v/c), user (v/c), node_type
| (v/c), vosonTxt_comment (v/c), title (v/c), label (v/c), edge_type
| (e/c)
+ edges from 09e30ea (vertex names):
1] elcb9b.1 ->elcb9b.0
[2] elcb9b.4_1_1_1_1_1_1_1_1_1->elcb9b.4_1_1_1_1_1_1_1_1
[3] elcb9b.4_1_1_4_2_1_1_1_1_1->elcb9b.4_1_1_4_2_1_1_1_1
[4] elcb9b.4_1_1_4_3_1_1_1_3_1->elcb9b.4_1_1_4_3_1_1_1_3
[5] elcb9b.4_1_1_4_3_1_1_1_3_2->elcb9b.4_1_1_4_3_1_1_1_3
[+ ... omitted several edges
The Reddit activity network contains a graph attribute
type
(set to “reddit”). The node attributes are:
name
(string showing position of the comment in the
thread), date
(date when the comment was authored, in
DD-MM-YY format), subreddit
(the subreddit from which the
post is collected), user
(Reddit handle or screen name of
the user who authored the comment or post), node_type
(‘comment’ or ‘thread’), title
(NA
for all
nodes except that representing the original post), label
(a
concatenation of name
and user
). Because we
used AddText()
in the above example, there is also a node
attribute vosonTxt_comment
which is the text from the
comment, or original post. The edge attributes is edge_type
which is ‘comment’ for all edges.
The example Reddit activity network contains 768 nodes and 767 edges. The following is a visualisation of the network, where the post is indicated by a red node, and blue indicates those comments that include the words “arson” or “starting fires”.
# set original post node colors to red based on a node type of thread
# set other node colors to grey
V(activityGraph)$color <- "grey"
V(activityGraph)$color[which(V(activityGraph)$node_type == "thread")] <- "red"
# get node indexes for nodes that have comment attributes containing words of interest
# set their node colors to blue
<- grep("arson|starting fires", tolower(V(activityGraph)$vosonTxt_comment))
ind V(activityGraph)$color[ind] <- "blue"
# open and write plot to a png file
png("reddit_activity.png", width = 600, height = 600)
plot(activityGraph, vertex.label = "", vertex.size = 4, edge.arrow.size = 0.5)
dev.off()
Data that was collected at different times, used different collect
parameters or was saved to multiple files can be merged by using
functions that operate on dataframes. The data from Collect
is output in tibble
(dataframe) format and provided each
collected data set are from the same social media type can be combined
using the rbind
function.
In the examples below or cases that involve large datasets, it can
sometimes be more efficient or timely to substitute optimized functions
such as dplyr::bind_rows
for rbind
or
data.table::rbindlist
instead of
do.call("rbind", list)
.
Data collected in the same session can be merged using the
Merge
function. The following twitter example combines
tweet data collected using different search parameters. The result is
combined most recent
tweets using the #auspol
hashtag and most popular
tweets using the
#bushfire
hashtag.
# collect twitter data for the #auspol hashtag
<- twitterAuth |>
auspolTwitterData Collect(searchTerm = "#auspol", searchType = "recent", numTweets = 100)
# collect twitter data for the #bushfire hashtag
<- twitterAuth |>
bushfireTwitterData Collect(searchTerm = "#bushfire", searchType = "popular", numTweets = 50)
# combine the collected data for the different hashtags
<- Merge(auspolTwitterData, bushfireTwitterData, writeToFile = TRUE) twitterData
If there are many data collections to be merged from file
vosonSML
has a MergeFiles
function. In this
example a list of twitter collection files in the
2019TwitterBushfireData
directory that end in
“TwitterData.rds” are merged together.
<- MergeFiles(
twitterData "2019TwitterBushfireData", pattern = "*TwitterData.rds"
)
Once the data is merged then it can then simply be passed to the
Create
function to create a network as per the usual
vosonSML
work flow.
# create an igraph of twitter actor network
<- twitterData |> Create("actor") |> Graph(writeToFile = TRUE) actorGraph
It is possible to import a network created using
vosonSML
, and saved as a “.graphml” file, into
VOSON Dashboard
. However, if you have created a categorical
node attribute in the network and wish to plot networks in
VOSON Dashboard
with node colour reflecting the node
attribute, then the node attribute name has to be pre-pended with
“vosonCA_”. This let’s VOSON Dashboard
know the attribute
is to be treated as categorical.
Above, we created a Twitter subnetwork: the giant component in the
reply network, with red nodes indicating those users who tweeted using
the word “bushfire”. We did this by created a node attribute
“tweetedBushfires”. For VOSON Dashboard
to recognise this
node attribute, it has to be named “vosonCA_tweetedBushfires”. The
following code creates a new node attribute with this name, and sames
the network as a graphml file:
V(g3)$vosonCA_tweetedBushfires <- V(g3)$tweetedBushfires
write.graph(g3, "g3.graphml", format = "graphml")
The following shows a screenshot of VOSON Dashboard
with
this network loaded and the “tweetedBushfires” attribute has been
seleced to be reflected in the node colour.
vosonSML
and VOSON Dashboard
are developed
and maintained at the Virtual Observatory
for the Study of Online Networks (VOSON) Lab at the Australian
National University.
vosonSML
was originally released on CRAN in November
2015 as the package SocialMediaLab
(Timothy Graham was the
lead developer), with the significantly revised and renamed
vosonSML
being released on CRAN in July 2018 (Bryan Gertzel
is the lead developer).
We acknowledge the contributions of Chung-hong Chan who implemented a
revised UI (involving magrittr
pipes) in the original
SocialMediaLab
package and Xiaolan Cai who has contributed
to documentation.