@article{,
title= {Sentiment Labelled Sentences Data Set },
keywords= {},
journal= {},
author= {},
year= {},
url= {},
license= {},
abstract= {This dataset was created for the Paper 'From Group to Individual Labels using Deep Features', Kotzias et. al,. KDD 2015
Please cite the paper if you want to use it :) It contains sentences labelled with positive or negative sentiment.
### Format:
sentence score
### Details:
Score is either 1 (for positive) or 0 (for negative)
The sentences come from three different websites/fields:
imdb.com
amazon.com
yelp.com
For each website, there exist 500 positive and 500 negative sentences. Those were selected randomly for larger datasets of reviews.
We attempted to select sentences that have a clearly positive or negative connotaton, the goal was for no neutral sentences to be selected.
### Attribute Information:
The attributes are text sentences, extracted from reviews of products, movies, and restaurants
### Relevant Papers:
'From Group to Individual Labels using Deep Features', Kotzias et. al,. KDD 2015
},
superseded= {},
terms= {}
}