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KoBEST: Korean Balanced Evaluation of Significant Tasks

Dohyung Kim‚ Myeongjun Jang‚ Deuk Sin Kwon and Eric Davis

Abstract

A well-formulated benchmark plays a critical role in spurring advancements in the natural language processing (NLP) field, as it allows objective and precise evaluation of diverse models. As modern language models (LMs) have become more elaborate and sophisticated, more difficult benchmarks that require linguistic knowledge and reasoning have been proposed. However, most of these benchmarks only support English, and great effort is necessary to construct benchmarks for other low-resource languages. To this end, we propose a new benchmark named Korean balanced evaluation of significant tasks (KoBEST), which consists of five Korean-language downstream tasks. Professional Korean linguists designed the tasks that require advanced Korean linguistic knowledge. Moreover, our data is purely annotated by humans and thoroughly reviewed to guarantee high data quality. We also provide baseline models and human performance results. Our dataset is available on the Huggingface.

Book Title
Proceedings of International Conference on Computational Linguistics (COLING) 2022‚ Gyeongju‚ Republic of Korea‚ October 2022
Publisher
International Committee on Computational Linguistics
Year
2022