Biomedical Informatics Insights 2012:5 (Suppl. 1) 129-136
Original Research
Published on 30 Jan 2012
DOI: 10.4137/BII.S8973
Sign up for email alerts to receive notifications of new articles published in Biomedical Informatics Insights
We study the discrimination of emotions annotated in free texts at the sentence level: a sentence can either be associated with no emotion (neutral) or multiple labels of emotion. The proposed system relies on three characteristics. We implement an early fusion of grams of increasing orders transposing an approach successfully employed in the related task of opinion mining. We apply a filtering process that consists in extracting frequent n-grams and making use of the Shannon’s entropy measure to respectively maintain dictionaries at balanced sizes and keep emotion specific features. Finally the overall system is implemented as a 2-step decision process: a first classifier discriminates between neutral and emotion bearing sentences, then one classifier per emotion is applied on emotion bearing sentences. The final decision is given by the classifier holding the maximum confidence. Results obtained on the testing set are promising.
PDF (688.96 KB PDF FORMAT)
RIS citation (ENDNOTE, REFERENCE MANAGER, PROCITE, REFWORKS)
BibTex citation (BIBDESK, LATEX)
PMC HTML
The publication process was efficient and well-organized. I am pleased with my decision to submit my manuscript to Biomedical Informatics Insights and highly recommend others to submit their work to the journal.
Facebook Google+ Twitter
Pinterest Tumblr YouTube