[java-nlp-user] 2-class pre-trained sentiment model



Yes, it is in the models jar edu/stanford/nlp/models/sentiment/sentiment.binary.ser.gz On Wed, Jan 22, 2014 at 4:04 PM, Romain Paulus <romainpaulusisep at gmail.com> wrote: > Hi, > > The default sentiment model in javaNLP is a 5-class classifier (very > positive, positive, neutral, negative, very negative). Is there an already > trained 2-class model (positive, negative) included somewhere, like the one > used in Richard Socher's RNTN paper?

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