Facebook and R
Revision as of 15:47, 9 August 2016 by PeterHarding (talk | contribs)
Also see - Getting Started with R | R Articles | R Notes
- http://pablobarbera.com/blog/archives/3.html
- https://github.com/pablobarbera/streamR
- Automated Data Collection with R: A Practical Guide to Web Scraping and Text Mining
> install.packages("ROAuth") also installing the dependencies ‘bitops’, ‘RCurl’, ‘digest’ trying URL 'http://cran.ms.unimelb.edu.au/bin/windows/contrib/3.3/bitops_1.0-6.zip' Content type 'application/zip' length 36372 bytes (35 KB) downloaded 35 KB trying URL 'http://cran.ms.unimelb.edu.au/bin/windows/contrib/3.3/RCurl_1.95-4.8.zip' Content type 'application/zip' length 2854329 bytes (2.7 MB) downloaded 2.7 MB trying URL 'http://cran.ms.unimelb.edu.au/bin/windows/contrib/3.3/digest_0.6.10.zip' Content type 'application/zip' length 169671 bytes (165 KB) downloaded 165 KB trying URL 'http://cran.ms.unimelb.edu.au/bin/windows/contrib/3.3/ROAuth_0.9.6.zip' Content type 'application/zip' length 52222 bytes (50 KB) downloaded 50 KB ... > install.packages("httr") trying URL 'http://cran.ms.unimelb.edu.au/bin/windows/contrib/3.3/httr_1.2.1.zip' Content type 'application/zip' length 281284 bytes (274 KB) downloaded 274 KB ... > library(httr) > Sys.setenv(FACEBOOK_CONSUMER_SECRET = "AAAA") > facebook <- oauth_endpoint( authorize = "https://www.facebook.com/dialog/oauth", access = "https://graph.facebook.com/oauth/access_token") > fb_app <- oauth_app("facebook", "1234567890")
Some of the R commands...
install.packages("Rfacebook") # from CRAN library(devtools) install_github("Rfacebook", "pablobarbera", subdir = "Rfacebook") # from GitHub
library(Rfacebook) # token generated here: https://developers.facebook.com/tools/explorer token <- "XXXXXXXXXXXXXX" me <- getUsers("xxxx", token, private_info = TRUE) me$name # my name
my_friends <- getFriends(token, simplify = TRUE) head(my_friends$id, n = 1) # get lowest user ID
my_friends_info <- getUsers(my_friends$id, token, private_info = TRUE) table(my_friends_info$gender) # gender
table(substr(my_friends_info$locale, 1, 2)) # language table(substr(my_friends_info$locale, 4, 5)) # country table(my_friends_info$relationship_status)["It's complicated"] # relationship status
mat <- getNetwork(token, format = "adj.matrix") dim(mat)
See - http://blog.revolutionanalytics.com/2013/11/how-to-analyze-you-facebook-friends-network-with-r.html
posts <- searchFacebook(string = "upworthy", token, n = 500, since = "20 january 2016 00:00", until = "10 august2016 10:00") posts[which.max(posts$likes_count), ]
## convert Facebook date format to R date format format.facebook.date <- function(datestring) { date <- as.POSIXct(datestring, format = "%Y-%m-%dT%H:%M:%S+0000", tz = "GMT") } ## aggregate metric counts over month aggregate.metric <- function(metric) { m <- aggregate(page[[paste0(metric, "_count")]], list(month = page$month), mean) m$month <- as.Date(paste0(m$month, "-15")) m$metric <- metric return(m) } # create data frame with average metric counts per month page$datetime <- format.facebook.date(page$created_time) page$month <- format(page$datetime, "%Y-%m") df.list <- lapply(c("likes", "comments", "shares"), aggregate.metric) df <- do.call(rbind, df.list) # visualize evolution in metric library(ggplot2) library(scales) ggplot(df, aes(x = month, y = x, group = metric)) + geom_line(aes(color = metric)) + scale_x_date(breaks = "years", labels = date_format("%Y")) + scale_y_log10("Average count per post", breaks = c(10, 100, 1000, 10000, 50000)) + theme_bw() + theme(axis.title.x = element_blank())
post_id <- head(page$id, n = 1) ## ID of most recent post post <- getPost(post_id, token, n = 1000, likes = TRUE, comments = FALSE) users <- getUsers(post$likes$from_id, token) table(users$gender) # gender table(substr(users$locale, 4, 5)) # country