A Linked Open Data Approach for Sentiment Lexicon Adaptation

Social media platforms have recently become a gold mine for organisations to monitor their reputation by extracting and analysing the sentiment of the posts generated about them, their markets, and competitors. Among the approaches to analyse sentiment from social media, approaches based on sentiment lexicons (sets of words with associated sentiment scores) have gained popularity since they do not rely on training data, as opposed to Machine Learning approaches. However, sentiment lexicons consider a static sentiment score for each word without taking into consideration the different contexts in which the word is used (e.g, great problem vs. great smile). Additionally, new words constantly emerge from dynamic and rapidly changing social media environments that may not be covered by the lexicons. In this paper we propose a lexicon adaptation approach that makes use of semantic relations extracted from DBpedia to better understand the various contextual scenarios in which words are used. We evaluate our approach on three different Twitter datasets and show that using semantic information to adapt the lexicon improves sentiment computation by 3.7% in average accuracy, and by 2.6% in average F1 measure.

[1]  Janyce Wiebe,et al.  Recognizing Contextual Polarity in Phrase-Level Sentiment Analysis , 2005, HLT.

[2]  Michael L. Littman,et al.  Measuring praise and criticism: Inference of semantic orientation from association , 2003, TOIS.

[3]  Harith Alani,et al.  Adapting Sentiment Lexicons Using Contextual Semantics for Sentiment Analysis of Twitter , 2014, ESWC.

[4]  Peter D. Turney Thumbs Up or Thumbs Down? Semantic Orientation Applied to Unsupervised Classification of Reviews , 2002, ACL.

[5]  W. N. Locke,et al.  Machine Translation of Languages , 1956 .

[6]  R. Darnell Translation , 1873, The Indian medical gazette.

[7]  Harith Alani,et al.  Evaluation Datasets for Twitter Sentiment Analysis: A survey and a new dataset, the STS-Gold , 2013, ESSEM@AI*IA.

[8]  Erik Cambria,et al.  An Introduction to Concept-Level Sentiment Analysis , 2013, MICAI.

[9]  Harith Alani,et al.  SentiCircles for Contextual and Conceptual Semantic Sentiment Analysis of Twitter , 2014, ESWC.

[10]  Huan Liu,et al.  Unsupervised sentiment analysis with emotional signals , 2013, WWW.

[11]  Stefan M. Rüger,et al.  Weakly Supervised Joint Sentiment-Topic Detection from Text , 2012, IEEE Transactions on Knowledge and Data Engineering.

[12]  Mike Thelwall,et al.  Sentiment strength detection for the social web , 2012, J. Assoc. Inf. Sci. Technol..

[13]  Qiang Yang,et al.  Cross-Domain Co-Extraction of Sentiment and Topic Lexicons , 2012, ACL.

[14]  Mike Thelwall,et al.  Sentiment in short strength detection informal text , 2010 .

[15]  Yue Lu,et al.  Automatic construction of a context-aware sentiment lexicon: an optimization approach , 2011, WWW.

[16]  Finn Årup Nielsen,et al.  A New ANEW: Evaluation of a Word List for Sentiment Analysis in Microblogs , 2011, #MSM.

[17]  Hinrich Schütze,et al.  Bootstrapping Sentiment Labels For Unannotated Documents With Polarity PageRank , 2012, LREC.

[18]  Claire Cardie,et al.  Adapting a Polarity Lexicon using Integer Linear Programming for Domain-Specific Sentiment Classification , 2009, EMNLP.

[19]  Guillermo Sapiro,et al.  If you are happy and you know it... tweet , 2012, CIKM '12.

[20]  Andrea Esuli,et al.  SentiWordNet 3.0: An Enhanced Lexical Resource for Sentiment Analysis and Opinion Mining , 2010, LREC.

[21]  Masnizah Mohd,et al.  Sentiment Lexicon Interpolation and Polarity Estimation of Objective and Out-Of-Vocabulary Words to Improve Sentiment Classification on Microblogging , 2014, PACLIC.

[22]  Erik Cambria,et al.  SenticNet 2: A Semantic and Affective Resource for Opinion Mining and Sentiment Analysis , 2012, FLAIRS.

[23]  Johan Bollen,et al.  Twitter mood predicts the stock market , 2010, J. Comput. Sci..

[24]  Preslav Nakov,et al.  SemEval-2013 Task 2: Sentiment Analysis in Twitter , 2013, *SEMEVAL.

[25]  Patrick Pantel,et al.  From Frequency to Meaning: Vector Space Models of Semantics , 2010, J. Artif. Intell. Res..

[26]  Giuseppe Pirrò,et al.  Explaining and Suggesting Relatedness in Knowledge Graphs , 2015, SEMWEB.

[27]  K. Thompson,et al.  If You're Happy and You Know It , 2012 .