Labeling Emotions in Suicide Notes: Cost-Sensitive Learning with Heterogeneous Features
Author(s) -
Jonathon Read,
Erik Velldal,
Lilja Øvrelid
Publication year - 2012
Publication title -
biomedical informatics insights
Language(s) - English
Resource type - Journals
ISSN - 1178-2226
DOI - 10.4137/bii.s8930
Subject(s) - variety (cybernetics) , computer science , sentence , class (philosophy) , artificial intelligence , natural language processing , machine learning
This paper describes a system developed for Track 2 of the 2011 Medical NLP Challenge on identifying emotions in suicide notes. Our approach involves learning a collection of one-versus-all classifiers, each deciding whether or not a particular label should be assigned to a given sentence. We explore a variety of features types-syntactic, semantic and surface-oriented. Cost-sensitive learning is used for dealing with the issue of class imbalance in the data.
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