I downloaded WN-Affect. I am however not sure how to use it to detect the mood of a sentence. For example if I have a string "I hate football." I want to be able to detect whether the mood is bad and the emotion is fear. WN-Affect has no tutorial on how to do it, and I am kind of new to python. Any help would be great!
In short: Use SentiWordNet instead and look at https://github.com/kevincobain2000/sentiment_classifier
Affectedness vs Sentiment
The line between affect and sentiment is very fine. One should looking into
Affectedness in linguistics studies, e.g. http://compling.hss.ntu.edu.sg/events/2014-ws-affectedness/ and
Sentiment Analysis in computational researches. For now, let's call both the task of identifying affect and sentiment, sentiment analysis.
Also note that
WN-Affect is a rather old resource compared to
Here's a good resource for using SentiWordNet for sentiment analysis: https://github.com/kevincobain2000/sentiment_classifier.
Often sentiment analysis has only two classes,
negative sentiment. Whereas the WN-affect uses 11 types of affectedness labels:
- cognitive state
- physical state
- hedonic signal
- emotional response
For each type, there are multiple classes, see https://github.com/larsmans/wordnet-domains-sentiwords/blob/master/wn-domains/wn-affect-1.1/a-hierarchy.xml
To answer the question of how one can use the WN-Affect, there're several things you need to do:
First map WN1.6 to WN3.0 (it's not an easy task, you have to do several mappings, especially the mapping between 2.0-2.1)
Now using the WN-Affect with WN3.0, you can apply
- the same classification technique as he SentiWordNet sentiment classifier or
- try to maximize the classes within text and then use some heuristics to choose 'positive' / 'negative'
WordNet-Affect uses WordNet 1.6 offsets.
However, WordNet 1.6 is still available for download. You can use the
nltk.corpus.WordNetCorpusReader class to load it. I wrote all the code to do it here.