I've tried to reorganize and provide a cohesive sentiment analysis package here. SentR includes word stemming and preprocessing and provides access to the ViralHeat API, a default aggregating function as well as a more advanced Naive Bayes method.
Installing is relatively simple:
And a simple classification example:
# Create small vectors for happy and sad words (useful in aggregate(...) function)
positive <- c('happy', 'well-off', 'good', 'happiness')
negative <- c('sad', 'bad', 'miserable', 'terrible')
# Words to test sentiment
test <- c('I am a very happy person.', 'I am a very sad person',
'I’ve always understood happiness to be appreciation. There is no greater happiness than appreciation for what one has- both physically and in the way of relationships and ideologies. The unhappy seek that which they do not have and can not fully appreciate the things around them. I don’t expect much from life. I don’t need a high paying job, a big house or fancy cars. I simply wish to be able to live my life appreciating everything around me.
# 1. Simple Summation
out <- classify.aggregate(test, positive, negative)
# 2. Naive Bayes
out <- classify.naivebayes(test)
Which provides the following output:
POS NEG POS/NEG SENT
[1,] "9.47547003995745" "0.445453222112551" "21.2715265477714" "positive"
[2,] "1.03127774142571" "9.47547003995745" "0.108836578774127" "negative"
[3,] "67.1985217685598" "35.1792261323723" "1.9101762362738" "positive"
Please feel free to contribute :) Hope that helps!