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I am referring to a previously asked question: I want to do a sentiment analysis of German tweets and have been using the code below from the stackoverflow thread I've referred to. However, I would like to do an analysis getting the actual sentiment-scores as a result and not just the sum of TRUE/FALSE, whether a word is positive or negative. Any ideas for an easy way to do this?

You can find the words list also in the previous thread.


readAndflattenSentiWS <- function(filename) { 
  words = readLines(filename, encoding="UTF-8")
  words <- sub("\\|[A-Z]+\t[0-9.-]+\t?", ",", words)
  words <- unlist(strsplit(words, ","))
  words <- tolower(words)
pos.words <- c(scan("Post3/positive-words.txt",what='character', comment.char=';', quiet=T), 
neg.words <- c(scan("Post3/negative-words.txt",what='character', comment.char=';', quiet=T), 

score.sentiment = function(sentences, pos.words, neg.words, .progress='none') {
  scores = laply(sentences, function(sentence, pos.words, neg.words) 
    # clean up sentences with R's regex-driven global substitute, gsub():
    sentence = gsub('[[:punct:]]', '', sentence)
    sentence = gsub('[[:cntrl:]]', '', sentence)
    sentence = gsub('\\d+', '', sentence)
    # and convert to lower case:
    sentence = tolower(sentence)
    # split into words. str_split is in the stringr package
    word.list = str_split(sentence, '\\s+')
    # sometimes a list() is one level of hierarchy too much
    words = unlist(word.list)
    # compare our words to the dictionaries of positive & negative terms
    pos.matches = match(words, pos.words)
    neg.matches = match(words, neg.words)
    # match() returns the position of the matched term or NA
    # I don't just want a TRUE/FALSE! How can I do this?
    pos.matches = !is.na(pos.matches)
    neg.matches = !is.na(neg.matches)
    # and conveniently enough, TRUE/FALSE will be treated as 1/0 by sum():
    score = sum(pos.matches) - sum(neg.matches)
  pos.words, neg.words, .progress=.progress )
  scores.df = data.frame(score=scores, text=sentences)

sample <- c("ich liebe dich. du bist wunderbar",
            "Ich hasse dich, geh sterben!", 
            "i love you. you are wonderful.",
            "i hate you, die.")
(test.sample <- score.sentiment(sample, 
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Does your code run and work? I am guessing laply is supposed to be lapply but the post you quote also wrote that... –  Darren Cook May 16 at 0:44
Yes, it runs and works. I actually tried it changing laply to lapply and then it didn't work anymore. I'm still rather new to these functions so I'm not sure why... –  juliasb May 16 at 13:19
Ah, laply is part of plyr! Glad I didn't edit to "fix" that now :-) –  Darren Cook May 16 at 23:55

1 Answer 1

As a starting point, this line:

words <- sub("\\|[A-Z]+\t[0-9.-]+\t?", ",", words)

is saying "throw away the POS information and the sentiment value (to just leave you with the word list).

So to do what you want you will need to parse the data differently, and you will need a different data structure. readAndflattenSentiWS is returning a vector currently, but you will want to be returning a lookup table (from string to number: using an env object feels a good fit, though if I also wanted the POS info then a data.frame starts to feel correct).

After that, most of your main loop can be roughly the same, but you'll need to collect the values, and sum them, rather than just sum the number of positive and negative matches.

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