Publication | Open Access
An Effective BERT-Based Pipeline for Twitter Sentiment Analysis: A Case Study in Italian
141
Citations
62
References
2020
Year
Language Model BertEngineeringEffective Bert-based PipelineCommunicationMultimodal Sentiment AnalysisCorpus LinguisticsSentiment AnalysisText MiningNatural Language ProcessingApplied LinguisticsSocial MediaComputational LinguisticsLanguage EngineeringAffective ComputingTwitter Sentiment AnalysisLanguage StudiesContent AnalysisMachine TranslationSocial Medium MiningNlp TaskSentiment Analysis TechniquesCase StudyTwitter JargonSocial Medium DataLinguistics
Over the last decade industrial and academic communities have increased their focus on sentiment analysis techniques, especially applied to tweets. State-of-the-art results have been recently achieved using language models trained from scratch on corpora made up exclusively of tweets, in order to better handle the Twitter jargon. This work aims to introduce a different approach for Twitter sentiment analysis based on two steps. Firstly, the tweet jargon, including emojis and emoticons, is transformed into plain text, exploiting procedures that are language-independent or easily applicable to different languages. Secondly, the resulting tweets are classified using the language model BERT, but pre-trained on plain text, instead of tweets, for two reasons: (1) pre-trained models on plain text are easily available in many languages, avoiding resource- and time-consuming model training directly on tweets from scratch; (2) available plain text corpora are larger than tweet-only ones, therefore allowing better performance. A case study describing the application of the approach to Italian is presented, with a comparison with other Italian existing solutions. The results obtained show the effectiveness of the approach and indicate that, thanks to its general basis from a methodological perspective, it can also be promising for other languages.
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