Publication | Open Access
Learning Subjective Language
742
Citations
58
References
2004
Year
EngineeringCommunicationSemanticsMultimodal Sentiment AnalysisLanguage LearningSentiment AnalysisText MiningApplied LinguisticsNatural Language ProcessingSubjective LanguageComputational LinguisticsAffective ComputingLanguage StudiesContent AnalysisSubjectivity CluesSubjectivity AnalysisNlp TaskTerminology ExtractionSemantic ParsingLinguisticsOpinion Aggregation
Subjectivity in natural language refers to aspects of language used to express opinions, evaluations, and speculations. There are numerous natural language processing applications for which subjectivity analysis is relevant, including information extraction and text categorization. The goal of this work is learning subjective language from corpora. Clues of subjectivity are generated and tested, including low-frequency words, collocations, and adjectives and verbs identified using distributional similarity. The features are also examined working together in concert. The features, generated from different data sets using different procedures, exhibit consistency in performance in that they all do better and worse on the same data sets. In addition, this article shows that the density of subjectivity clues in the surrounding context strongly affects how likely it is that a word is subjective, and it provides the results of an annotation study assessing the subjectivity of sentences with high-density features. Finally, the clues are used to perform opinion piece recognition (a type of text categorization and genre detection) to demonstrate the utility of the knowledge acquired in this article.
| Year | Citations | |
|---|---|---|
Page 1
Page 1