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TwHIN-BERT: A Socially-Enriched Pre-trained Language Model for Multilingual Tweet Representations at Twitter

Xinyang Zhang, Yury Malkov, Omar U. Florez, Serim Park, Brian McWilliams, Jiawei Han, Ahmed El-Kishky

202351 citationsDOI

Abstract

Pre-trained language models (PLMs) are fundamental for natural language processing applications. Most existing PLMs are not tailored to the noisy user-generated text on social media, and the pre-training does not factor in the valuable social engagement logs available in a social network. We present TwHIN-BERT, a multilingual language model productionized at Twitter, trained on in-domain data from the popular social network. TwHIN-BERT differs from prior pre-trained language models as it is trained with not only text-based self-supervision but also with a social objective based on the rich social engagements within a Twitter heterogeneous information network (TwHIN). Our model is trained on 7 billion tweets covering over 100 distinct languages, providing a valuable representation to model short, noisy, user-generated text. We evaluate our model on various multilingual social recommendation and semantic understanding tasks and demonstrate significant metric improvement over established pre-trained language models. We open-source TwHIN-BERT and our curated hashtag prediction and social engagement benchmark datasets to the research community.

Topics & Concepts

Computer scienceSocial mediaLanguage modelNatural language processingArtificial intelligenceBenchmark (surveying)Metric (unit)Social network (sociolinguistics)Representation (politics)World Wide WebInformation retrievalOperations managementPoliticsPolitical scienceLawGeodesyGeographyEconomicsTopic ModelingNatural Language Processing TechniquesAdvanced Graph Neural Networks
TwHIN-BERT: A Socially-Enriched Pre-trained Language Model for Multilingual Tweet Representations at Twitter | Litcius