Source
ACL
DATE OF PUBLICATION
07/27/2025
Authors
Shamsuddeen Hassan Muhammad Nedjma Ousidhoum Idris Abdulmumin Jan Philip Wahle Terry Ruas Meriem Beloucif Christine De Kock Nirmal Surange Daniela Teodorescu Ibrahim Said Ahmad David Ifeoluwa Adelani Alham Fikri Aji Felermino DMA Ali Ilseyar Alimova Vladimir Araujo Nikolay Babakov Naomi Baes Ana-Maria Bucur Andiswa Bukula Guanqun Cao Rodrigo Tufino Cardenas Rendi Chevi Chiamaka Ijeoma Chukwuneke Alexandra Ciobotaru Daryna Dementieva Murja Sani Gadanya Robert Geislinger Bela Gipp Oumaima Hourrane Oana Ignat Falalu Ibrahim Lawan Rooweither Mabuya Rahmad Mahendra Vukosi Marivate Andrew Piper Alexander Panchenko Charles Henrique Porto Ferreira Vitaly Protasov Samuel Rutunda Manish Shrivastava Aura Cristina Udrea Lilian Diana Awuor Wanzare Sophie Wu Florian Valentin Wunderlich Hanif Muhammad Zhafran Tianhui Zhang Yi Zhou Saif M. Mohammad
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BRIGHTER: BRIdging the Gap in Human-Annotated Textual Emotion Recognition Datasets for 28 Languages

Abstract

People worldwide use language in subtle and complex ways to express emotions. While emotion recognition -- an umbrella term for several NLP tasks -- significantly impacts different applications in NLP and other fields, most work in the area is focused on high-resource languages. Therefore, this has led to major disparities in research and proposed solutions, especially for low-resource languages that suffer from the lack of high-quality datasets. In this paper, we present BRIGHTER-- a collection of multilabeled emotion-annotated datasets in 28 different languages. BRIGHTER covers predominantly low-resource languages from Africa, Asia, Eastern Europe, and Latin America, with instances from various domains annotated by fluent speakers. We describe the data collection and annotation processes and the challenges of building these datasets. Then, we report different experimental results for monolingual and crosslingual multi-label emotion identification, as well as intensity-level emotion recognition. We investigate results with and without using LLMs and analyse the large variability in performance across languages and text domains. We show that BRIGHTER datasets are a step towards bridging the gap in text-based emotion recognition and discuss their impact and utility.

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