require(stringr) library(foreach) library(doParallel) # MATCH TWEETS ------------------------------------------------------------ id_folder <- "matched-ids" unlink(id_folder, recursive = TRUE) dir.create(id_folder) issues <- data.frame(date = drange) issuelist <- readLines("issues.xml") issuelist <- str_replace_all(string = issuelist, pattern = ".*", "") issuelist <- xmlToList(issuelist) issueheads <- names(issuelist) issues[issueheads] <- 0 tweets$issue <- "" tweets$tags <- "" tagexpand <- c("", "s", "n", "en", "er", "e") # Parallelisation writeLines(c(""), "issuecomp-analysis.log") cl<-makeCluster(4) registerDoParallel(cl) foreach(d = 1:nrow(issues), .packages = c("stringr"), .combine=rbind) %dopar% { #for(d in 1:nrow(issues)) { # Go through every day curdate <- issues$date[d] cat(paste(as.character(curdate),"\n"), file="issuecomp-analysis.log", append=TRUE) # Put all tweets from specific day in a temporary DF tweets_curday <- tweets[tweets[, "created_at"] == curdate, ] for(t in 1:nrow(tweets_curday)){ # cat(paste("Starting tweet", t, "of",as.character(curdate),"\n"), file="issuecomp-analysis.log", append=TRUE) # Select tweet's text, make it lowercase and remove hashtag indicators (#) curtext <- as.character(tweets_curday$text[t]) curtext <- str_replace_all(curtext, "#", "") curid <- as.character(tweets_curday$id_str[t]) # Now test each single issue (not tag!) for(i in 1:length(issueheads)) { curissue <- issueheads[i] curtags <- as.character(issuelist[[curissue]]) curfile <- str_c(id_folder,"/",curissue,".csv") # Now test all tags of a single issue for(s in 1:length(curtags)) { curtag <- curtags[s] curchars <- nchar(curtag, type = "chars") # Check if tag is an acronym. If so, ignore.case will be deactivated in smartPatternMatch if(curchars <= 4) { curacro <- checkAcronym(string = curtag, chars = curchars) } else { curacro <- FALSE } # Now expand the current tag by possible suffixes that may be plural forms if(!curacro) { for(e in 1:length(tagexpand)) { curtag[e] <- str_c(curtag[1], tagexpand[e]) } } # Set Levenshtein distance depending on char length if(curchars <= 4) { curdistance <- 0 } else { curdistance <- 1 } # Match current tweet with tag. If >= 5 letters allow 1 changed letter, if >=8 letters allow also 1 (Levenshtein distance) tags_found <- NULL # Match the tweet with each variation of tagexpand for(e in 1:length(curtag)) { tags_found[e] <- smartPatternMatch(curtext, curtag[e], curdistance, curacro) } tags_found <- any(tags_found) curtag <- curtag[1] if(tags_found == TRUE) { # # Raise number of findings on this day for this issue by 1 # issues[d,curissue] <- issues[d,curissue] + 1 # # # Add issue and first matched tag of tweet to tweets-DF # oldissue <- tweets[tweets[, "id_str"] == curid, "issue"] # tweets[tweets[, "id_str"] == curid, "issue"] <- str_c(oldissue, curissue, ";") # oldtag <- tweets[tweets[, "id_str"] == curid, "tags"] # tweets[tweets[, "id_str"] == curid, "tags"] <- str_c(oldtag, curtag, ";") # Add information to file for function viewPatternMatching write(str_c(curdate,";\"",curid,"\";",curissue,";",curtag), curfile, append = TRUE) cat(paste("Match!\n"), file="issuecomp-analysis.log", append=TRUE) # data.frame(date=curdate, issue=curissue) break # next issue, no more tags from same issue } else { #cat("Nothing found\n") } } # /for curtags } # /for issuelist } # /for tweets_curday } # /for drange require(lubridate) require(XML) require(ggplot2) require(reshape2) require(stringr) library(foreach) library(doParallel) # MATCH TWEETS ------------------------------------------------------------ id_folder <- "matched-ids" unlink(id_folder, recursive = TRUE) dir.create(id_folder) issues <- data.frame(date = drange) issuelist <- readLines("issues.xml") issuelist <- str_replace_all(string = issuelist, pattern = ".*", "") issuelist <- xmlToList(issuelist) issueheads <- names(issuelist) issues[issueheads] <- 0 tweets$issue <- "" tweets$tags <- "" tagexpand <- c("", "s", "n", "en", "er", "e") # Parallelisation writeLines(c(""), "issuecomp-analysis.log") cl<-makeCluster(4) registerDoParallel(cl) foreach(d = 1:nrow(issues), .packages = c("stringr"), .combine=rbind) %dopar% { #for(d in 1:nrow(issues)) { # Go through every day curdate <- issues$date[d] cat(paste(as.character(curdate),"\n"), file="issuecomp-analysis.log", append=TRUE) # Put all tweets from specific day in a temporary DF tweets_curday <- tweets[tweets[, "created_at"] == curdate, ] for(t in 1:nrow(tweets_curday)){ # cat(paste("Starting tweet", t, "of",as.character(curdate),"\n"), file="issuecomp-analysis.log", append=TRUE) # Select tweet's text, make it lowercase and remove hashtag indicators (#) curtext <- as.character(tweets_curday$text[t]) curtext <- str_replace_all(curtext, "#", "") curid <- as.character(tweets_curday$id_str[t]) # Now test each single issue (not tag!) for(i in 1:length(issueheads)) { curissue <- issueheads[i] curtags <- as.character(issuelist[[curissue]]) curfile <- str_c(id_folder,"/",curissue,".csv") # Now test all tags of a single issue for(s in 1:length(curtags)) { curtag <- curtags[s] curchars <- nchar(curtag, type = "chars") # Check if tag is an acronym. If so, ignore.case will be deactivated in smartPatternMatch if(curchars <= 4) { curacro <- checkAcronym(string = curtag, chars = curchars) } else { curacro <- FALSE } # Now expand the current tag by possible suffixes that may be plural forms if(!curacro) { for(e in 1:length(tagexpand)) { curtag[e] <- str_c(curtag[1], tagexpand[e]) } } # Set Levenshtein distance depending on char length if(curchars <= 4) { curdistance <- 0 } else { curdistance <- 1 } # Match current tweet with tag. If >= 5 letters allow 1 changed letter, if >=8 letters allow also 1 (Levenshtein distance) tags_found <- NULL # Match the tweet with each variation of tagexpand for(e in 1:length(curtag)) { tags_found[e] <- smartPatternMatch(curtext, curtag[e], curdistance, curacro) } tags_found <- any(tags_found) curtag <- curtag[1] if(tags_found == TRUE) { # # Raise number of findings on this day for this issue by 1 # issues[d,curissue] <- issues[d,curissue] + 1 # # # Add issue and first matched tag of tweet to tweets-DF # oldissue <- tweets[tweets[, "id_str"] == curid, "issue"] # tweets[tweets[, "id_str"] == curid, "issue"] <- str_c(oldissue, curissue, ";") # oldtag <- tweets[tweets[, "id_str"] == curid, "tags"] # tweets[tweets[, "id_str"] == curid, "tags"] <- str_c(oldtag, curtag, ";") # Add information to file for function viewPatternMatching write(str_c(curdate,";\"",curid,"\";",curissue,";",curtag), curfile, append = TRUE) # cat(paste("Match!\n"), file="issuecomp-analysis.log", append=TRUE) # data.frame(date=curdate, issue=curissue) break # next issue, no more tags from same issue } else { #cat("Nothing found\n") } } # /for curtags } # /for issuelist } # /for tweets_curday } # /for drange stopCluster(cl) drange drange[40] drange[50] View(issues) require(lubridate) require(XML) require(ggplot2) require(reshape2) require(stringr) library(foreach) library(doParallel) drange[70] drange[80] drange[90] cl<-makeCluster(4) registerDoParallel(cl) foreach(d = 51:90, .packages = c("stringr"), .combine=rbind) %dopar% { #for(d in 1:nrow(issues)) { # Go through every day curdate <- issues$date[d] cat(paste(as.character(curdate),"\n"), file="issuecomp-analysis.log", append=TRUE) # Put all tweets from specific day in a temporary DF tweets_curday <- tweets[tweets[, "created_at"] == curdate, ] for(t in 1:nrow(tweets_curday)){ # cat(paste("Starting tweet", t, "of",as.character(curdate),"\n"), file="issuecomp-analysis.log", append=TRUE) # Select tweet's text, make it lowercase and remove hashtag indicators (#) curtext <- as.character(tweets_curday$text[t]) curtext <- str_replace_all(curtext, "#", "") curid <- as.character(tweets_curday$id_str[t]) # Now test each single issue (not tag!) for(i in 1:length(issueheads)) { curissue <- issueheads[i] curtags <- as.character(issuelist[[curissue]]) curfile <- str_c(id_folder,"/",curissue,".csv") # Now test all tags of a single issue for(s in 1:length(curtags)) { curtag <- curtags[s] curchars <- nchar(curtag, type = "chars") # Check if tag is an acronym. If so, ignore.case will be deactivated in smartPatternMatch if(curchars <= 4) { curacro <- checkAcronym(string = curtag, chars = curchars) } else { curacro <- FALSE } # Now expand the current tag by possible suffixes that may be plural forms if(!curacro) { for(e in 1:length(tagexpand)) { curtag[e] <- str_c(curtag[1], tagexpand[e]) } } # Set Levenshtein distance depending on char length if(curchars <= 4) { curdistance <- 0 } else { curdistance <- 1 } # Match current tweet with tag. If >= 5 letters allow 1 changed letter, if >=8 letters allow also 1 (Levenshtein distance) tags_found <- NULL # Match the tweet with each variation of tagexpand for(e in 1:length(curtag)) { tags_found[e] <- smartPatternMatch(curtext, curtag[e], curdistance, curacro) } tags_found <- any(tags_found) curtag <- curtag[1] if(tags_found == TRUE) { # # Raise number of findings on this day for this issue by 1 # issues[d,curissue] <- issues[d,curissue] + 1 # # # Add issue and first matched tag of tweet to tweets-DF # oldissue <- tweets[tweets[, "id_str"] == curid, "issue"] # tweets[tweets[, "id_str"] == curid, "issue"] <- str_c(oldissue, curissue, ";") # oldtag <- tweets[tweets[, "id_str"] == curid, "tags"] # tweets[tweets[, "id_str"] == curid, "tags"] <- str_c(oldtag, curtag, ";") # Add information to file for function viewPatternMatching write(str_c(curdate,";\"",curid,"\";",curissue,";",curtag), curfile, append = TRUE) # cat(paste("Match!\n"), file="issuecomp-analysis.log", append=TRUE) # data.frame(date=curdate, issue=curissue) break # next issue, no more tags from same issue } else { #cat("Nothing found\n") } } # /for curtags } # /for issuelist } # /for tweets_curday } # /for drange #rm(tweets_curday,curacro, curchars, curdate,curfile,curid,curissue,curtag,curtags,curtext,d,date_end,date_start,i,id_folder,oldissue,oldtag,s,t,tags_found) stopCluster(cl) drange[121] cl<-makeCluster(4) registerDoParallel(cl) foreach(d = 91:120, .packages = c("stringr"), .combine=rbind) %dopar% { #for(d in 1:nrow(issues)) { # Go through every day curdate <- issues$date[d] cat(paste(as.character(curdate),"\n"), file="issuecomp-analysis.log", append=TRUE) # Put all tweets from specific day in a temporary DF tweets_curday <- tweets[tweets[, "created_at"] == curdate, ] for(t in 1:nrow(tweets_curday)){ # cat(paste("Starting tweet", t, "of",as.character(curdate),"\n"), file="issuecomp-analysis.log", append=TRUE) # Select tweet's text, make it lowercase and remove hashtag indicators (#) curtext <- as.character(tweets_curday$text[t]) curtext <- str_replace_all(curtext, "#", "") curid <- as.character(tweets_curday$id_str[t]) # Now test each single issue (not tag!) for(i in 1:length(issueheads)) { curissue <- issueheads[i] curtags <- as.character(issuelist[[curissue]]) curfile <- str_c(id_folder,"/",curissue,".csv") # Now test all tags of a single issue for(s in 1:length(curtags)) { curtag <- curtags[s] curchars <- nchar(curtag, type = "chars") # Check if tag is an acronym. If so, ignore.case will be deactivated in smartPatternMatch if(curchars <= 4) { curacro <- checkAcronym(string = curtag, chars = curchars) } else { curacro <- FALSE } # Now expand the current tag by possible suffixes that may be plural forms if(!curacro) { for(e in 1:length(tagexpand)) { curtag[e] <- str_c(curtag[1], tagexpand[e]) } } # Set Levenshtein distance depending on char length if(curchars <= 4) { curdistance <- 0 } else { curdistance <- 1 } # Match current tweet with tag. If >= 5 letters allow 1 changed letter, if >=8 letters allow also 1 (Levenshtein distance) tags_found <- NULL # Match the tweet with each variation of tagexpand for(e in 1:length(curtag)) { tags_found[e] <- smartPatternMatch(curtext, curtag[e], curdistance, curacro) } tags_found <- any(tags_found) curtag <- curtag[1] if(tags_found == TRUE) { # # Raise number of findings on this day for this issue by 1 # issues[d,curissue] <- issues[d,curissue] + 1 # # # Add issue and first matched tag of tweet to tweets-DF # oldissue <- tweets[tweets[, "id_str"] == curid, "issue"] # tweets[tweets[, "id_str"] == curid, "issue"] <- str_c(oldissue, curissue, ";") # oldtag <- tweets[tweets[, "id_str"] == curid, "tags"] # tweets[tweets[, "id_str"] == curid, "tags"] <- str_c(oldtag, curtag, ";") # Add information to file for function viewPatternMatching write(str_c(curdate,";\"",curid,"\";",curissue,";",curtag), curfile, append = TRUE) # cat(paste("Match!\n"), file="issuecomp-analysis.log", append=TRUE) # data.frame(date=curdate, issue=curissue) break # next issue, no more tags from same issue } else { #cat("Nothing found\n") } } # /for curtags } # /for issuelist } # /for tweets_curday } # /for drange stopCluster(cl) drange[102] require(lubridate) require(XML) require(ggplot2) require(reshape2) require(stringr) library(foreach) library(doParallel) cl<-makeCluster(4) registerDoParallel(cl) foreach(d = 101:nrow(issues), .packages = c("stringr"), .combine=rbind) %dopar% { #for(d in 1:nrow(issues)) { # Go through every day curdate <- issues$date[d] cat(paste(as.character(curdate),"\n"), file="issuecomp-analysis.log", append=TRUE) # Put all tweets from specific day in a temporary DF tweets_curday <- tweets[tweets[, "created_at"] == curdate, ] for(t in 1:nrow(tweets_curday)){ # cat(paste("Starting tweet", t, "of",as.character(curdate),"\n"), file="issuecomp-analysis.log", append=TRUE) # Select tweet's text, make it lowercase and remove hashtag indicators (#) curtext <- as.character(tweets_curday$text[t]) curtext <- str_replace_all(curtext, "#", "") curid <- as.character(tweets_curday$id_str[t]) # Now test each single issue (not tag!) for(i in 1:length(issueheads)) { curissue <- issueheads[i] curtags <- as.character(issuelist[[curissue]]) curfile <- str_c(id_folder,"/",curissue,".csv") # Now test all tags of a single issue for(s in 1:length(curtags)) { curtag <- curtags[s] curchars <- nchar(curtag, type = "chars") # Check if tag is an acronym. If so, ignore.case will be deactivated in smartPatternMatch if(curchars <= 4) { curacro <- checkAcronym(string = curtag, chars = curchars) } else { curacro <- FALSE } # Now expand the current tag by possible suffixes that may be plural forms if(!curacro) { for(e in 1:length(tagexpand)) { curtag[e] <- str_c(curtag[1], tagexpand[e]) } } # Set Levenshtein distance depending on char length if(curchars <= 4) { curdistance <- 0 } else { curdistance <- 1 } # Match current tweet with tag. If >= 5 letters allow 1 changed letter, if >=8 letters allow also 1 (Levenshtein distance) tags_found <- NULL # Match the tweet with each variation of tagexpand for(e in 1:length(curtag)) { tags_found[e] <- smartPatternMatch(curtext, curtag[e], curdistance, curacro) } tags_found <- any(tags_found) curtag <- curtag[1] if(tags_found == TRUE) { # # Raise number of findings on this day for this issue by 1 # issues[d,curissue] <- issues[d,curissue] + 1 # # # Add issue and first matched tag of tweet to tweets-DF # oldissue <- tweets[tweets[, "id_str"] == curid, "issue"] # tweets[tweets[, "id_str"] == curid, "issue"] <- str_c(oldissue, curissue, ";") # oldtag <- tweets[tweets[, "id_str"] == curid, "tags"] # tweets[tweets[, "id_str"] == curid, "tags"] <- str_c(oldtag, curtag, ";") # Add information to file for function viewPatternMatching write(str_c(curdate,";\"",curid,"\";",curissue,";",curtag), curfile, append = TRUE) # cat(paste("Match!\n"), file="issuecomp-analysis.log", append=TRUE) # data.frame(date=curdate, issue=curissue) break # next issue, no more tags from same issue } else { #cat("Nothing found\n") } } # /for curtags } # /for issuelist } # /for tweets_curday } # /for drange require(lubridate) require(XML) require(ggplot2) require(reshape2) require(stringr) library(foreach) library(doParallel) cl<-makeCluster(3) registerDoParallel(cl) foreach(d = 101:nrow(issues), .packages = c("stringr"), .combine=rbind) %dopar% { #for(d in 1:nrow(issues)) { # Go through every day curdate <- issues$date[d] cat(paste(as.character(curdate),"\n"), file="issuecomp-analysis.log", append=TRUE) # Put all tweets from specific day in a temporary DF tweets_curday <- tweets[tweets[, "created_at"] == curdate, ] for(t in 1:nrow(tweets_curday)){ # cat(paste("Starting tweet", t, "of",as.character(curdate),"\n"), file="issuecomp-analysis.log", append=TRUE) # Select tweet's text, make it lowercase and remove hashtag indicators (#) curtext <- as.character(tweets_curday$text[t]) curtext <- str_replace_all(curtext, "#", "") curid <- as.character(tweets_curday$id_str[t]) # Now test each single issue (not tag!) for(i in 1:length(issueheads)) { curissue <- issueheads[i] curtags <- as.character(issuelist[[curissue]]) curfile <- str_c(id_folder,"/",curissue,".csv") # Now test all tags of a single issue for(s in 1:length(curtags)) { curtag <- curtags[s] curchars <- nchar(curtag, type = "chars") # Check if tag is an acronym. If so, ignore.case will be deactivated in smartPatternMatch if(curchars <= 4) { curacro <- checkAcronym(string = curtag, chars = curchars) } else { curacro <- FALSE } # Now expand the current tag by possible suffixes that may be plural forms if(!curacro) { for(e in 1:length(tagexpand)) { curtag[e] <- str_c(curtag[1], tagexpand[e]) } } # Set Levenshtein distance depending on char length if(curchars <= 4) { curdistance <- 0 } else { curdistance <- 1 } # Match current tweet with tag. If >= 5 letters allow 1 changed letter, if >=8 letters allow also 1 (Levenshtein distance) tags_found <- NULL # Match the tweet with each variation of tagexpand for(e in 1:length(curtag)) { tags_found[e] <- smartPatternMatch(curtext, curtag[e], curdistance, curacro) } tags_found <- any(tags_found) curtag <- curtag[1] if(tags_found == TRUE) { # # Raise number of findings on this day for this issue by 1 # issues[d,curissue] <- issues[d,curissue] + 1 # # # Add issue and first matched tag of tweet to tweets-DF # oldissue <- tweets[tweets[, "id_str"] == curid, "issue"] # tweets[tweets[, "id_str"] == curid, "issue"] <- str_c(oldissue, curissue, ";") # oldtag <- tweets[tweets[, "id_str"] == curid, "tags"] # tweets[tweets[, "id_str"] == curid, "tags"] <- str_c(oldtag, curtag, ";") # Add information to file for function viewPatternMatching write(str_c(curdate,";\"",curid,"\";",curissue,";",curtag), curfile, append = TRUE) # cat(paste("Match!\n"), file="issuecomp-analysis.log", append=TRUE) # data.frame(date=curdate, issue=curissue) break # next issue, no more tags from same issue } else { #cat("Nothing found\n") } } # /for curtags } # /for issuelist } # /for tweets_curday } # /for drange stopCluster(cl) drange[200] drange[300] drange[280] drange[270] drange[259]