Extending the EmotiNet Knowledge Base to Improve the Automatic Detection of Implicitly Expressed Emotions from Text
Sentiment analysis is one of the recent, highly dynamic fields in Natural
Language Processing. Most existing approaches are based on word-level
analysis of texts and are mostly able to detect only explicit expressions of
sentiment. However, in many cases, emotions are not expressed by using
words with an affective meaning (e.g. happy), but by describing real-life
situations, which readers (based on their commonsense knowledge) detect
as being related to a specic emotion. Given the challenges of detecting
emotions from contexts in which no lexical clue is present, in this article we
present a comparative analysis between the performance of well-established
methods for emotion detection (supervised and lexical knowledge-based) and
a method we propose and extend, which is based on commonsense knowledge
stored in the EmotiNet knowledge base. Our extensive evaluations show
that, in the context of this task, the approach based on EmotiNet is the
most appropriate.
BALAHUR DOBRESCU Alexandra;
2013-01-21
European Language Resources Association
JRC68984
978-2-9517408-7-7,
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