Adapting sentiment lexicons using contextual semantics for sentiment analysis of Twitter


Autoria(s): Saif, Hassan; He, Yulan; Fernández, Miriam; Alani, Harith
Contribuinte(s)

Gangemi, Aldo

Alani, Harith

Nissim, Malvina

Cambria, Erik

Reforgiato Recupero, Diego

Data(s)

2014

Resumo

Sentiment lexicons for sentiment analysis offer a simple, yet effective way to obtain the prior sentiment information of opinionated words in texts. However, words' sentiment orientations and strengths often change throughout various contexts in which the words appear. In this paper, we propose a lexicon adaptation approach that uses the contextual semantics of words to capture their contexts in tweet messages and update their prior sentiment orientations and/or strengths accordingly. We evaluate our approach on one state-of-the-art sentiment lexicon using three different Twitter datasets. Results show that the sentiment lexicons adapted by our approach outperform the original lexicon in accuracy and F-measure in two datasets, but give similar accuracy and slightly lower F-measure in one dataset.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/26183/1/Adapting_sentiment_lexicons_using_contextual_semantics_for_sentiment_analysis_of_Twitter.pdf

Saif, Hassan; He, Yulan; Fernández, Miriam and Alani, Harith (2014). Adapting sentiment lexicons using contextual semantics for sentiment analysis of Twitter. IN: SSA-SMILE 2014 : joint proceedings of SSA 2014 and SMILE 2014. Gangemi, Aldo; Alani, Harith; Nissim, Malvina; Cambria, Erik and Reforgiato Recupero, Diego (eds) CEUR workshop proceedings . CEUR-WS.org.

Publicador

CEUR-WS.org

Relação

http://eprints.aston.ac.uk/26183/

Tipo

Book Section

NonPeerReviewed