Topic Classification for Suicidology
Author(s) -
Jonathon Read,
Erik Velldal,
Lilja Øvrelid
Publication year - 2012
Publication title -
journal of computing science and engineering
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.172
H-Index - 16
eISSN - 2093-8020
pISSN - 1976-4677
DOI - 10.5626/jcse.2012.6.2.143
Subject(s) - computer science , wordnet , artificial intelligence , synonym (taxonomy) , class (philosophy) , support vector machine , machine learning , natural language processing , binary classification , qualitative analysis , information retrieval , qualitative research , botany , biology , genus , social science , sociology
Computational techniques for topic classification can support qualitative research by automatically applying labels in preparation for qualitative analyses. This paper presents an evaluation of supervised learning techniques applied to one such use case, namely, that of labeling emotions, instructions and information in suicide notes. We train a collection of one-versus-all binary support vector machine classifiers, using cost-sensitive learning to deal with class imbalance. The features investigated range from a simple bag-of-words and n-grams over stems, to information drawn from syntactic dependency analysis and WordNet synonym sets. The experimental results are complemented by an analysis of systematic errors in both the output of our system and the gold-standard annotations. Category: Smart and intelligent computing
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