Publication | Open Access
Contextual phrase-level polarity analysis using lexical affect scoring and syntactic N-grams
177
Citations
21
References
2009
Year
Unknown Venue
Affective VariableCommunicationMultimodal Sentiment AnalysisCorpus LinguisticsSentiment AnalysisText MiningSocial SciencesNatural Language ProcessingApplied LinguisticsSyntaxData ScienceLexical Affect ScoringComputational LinguisticsAffective ComputingLanguage EngineeringSubjective PhrasesLanguage StudiesSyntactic N-gramsContent AnalysisContextual PolarityLexiconNlp TaskDifficult BaselineSemantic ParsingLexical Complexity PredictionEmotionLinguisticsEmotion Recognition
We present a classifier to predict contextual polarity of subjective phrases in a sentence. Our approach features lexical scoring derived from the Dictionary of Affect in Language (DAL) and extended through WordNet, allowing us to automatically score the vast majority of words in our input avoiding the need for manual labeling. We augment lexical scoring with n-gram analysis to capture the effect of context. We combine DAL scores with syntactic constituents and then extract n-grams of constituents from all sentences. We also use the polarity of all syntactic constituents within the sentence as features. Our results show significant improvement over a majority class baseline as well as a more difficult baseline consisting of lexical n-grams.
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