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Bernice: A Multilingual Pre-trained Encoder for Twitter

Alexandra DeLucia, Shijie Wu, Aaron Mueller, Carlos Aguirre, Philip Resnik, Mark Dredze

202230 citationsDOIOpen Access PDF

Abstract

The language of Twitter differs significantly from that of other domains commonly included in large language model training. While tweets are typically multilingual and contain informal language, including emoji and hashtags, most pre-trained language models for Twitter are either monolingual, adapted from other domains rather than trained exclusively on Twitter, or are trained on a limited amount of in-domain Twitter data.We introduce Bernice, the first multilingual RoBERTa language model trained from scratch on 2.5 billion tweets with a custom tweet-focused tokenizer. We evaluate on a variety of monolingual and multilingual Twitter benchmarks, finding that our model consistently exceeds or matches the performance of a variety of models adapted to social media data as well as strong multilingual baselines, despite being trained on less data overall.We posit that it is more efficient compute- and data-wise to train completely on in-domain data with a specialized domain-specific tokenizer.

Topics & Concepts

Computer scienceVariety (cybernetics)Domain (mathematical analysis)Social mediaEncoderNatural language processingEmojiArtificial intelligenceLanguage modelScratchWorld Wide WebInformation retrievalProgramming languageOperating systemMathematical analysisMathematicsNatural Language Processing TechniquesTopic ModelingText Readability and Simplification
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