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CMU-MOSEAS: A Multimodal Language Dataset for Spanish, Portuguese, German and French

AmirAli Bagher Zadeh, Yansheng Cao, Simon Hessner, Paul Pu Liang, Soujanya Poria, Louis‐Philippe Morency

202043 citationsDOIOpen Access PDF

Abstract

Modeling multimodal language is a core research area in natural language processing. While languages such as English have relatively large multimodal language resources, other widely spoken languages across the globe have few or no large-scale datasets in this area. This disproportionately affects native speakers of languages other than English. As a step towards building more equitable and inclusive multimodal systems, we introduce the first large-scale multimodal language dataset for Spanish, Portuguese, German and French. The proposed dataset, called CMU-MOSEAS (CMU Multimodal Opinion Sentiment, Emotions and Attributes), is the largest of its kind with 40, 000 total labelled sentences. It covers a diverse set topics and speakers, and carries supervision of 20 labels including sentiment (and subjectivity), emotions, and attributes. Our evaluations on a state-of-the-art multimodal model demonstrates that CMU-MOSEAS enables further research for multilingual studies in multimodal language.

Topics & Concepts

PortugueseGermanSentenceNatural language processingComputer scienceSubjectivityArtificial intelligenceLinguisticsBrazilian PortuguesePhilosophyEpistemologyMultimodal Machine Learning ApplicationsTopic ModelingSentiment Analysis and Opinion Mining
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