Youjin Kang


2023

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“Why do I feel offended?” - Korean Dataset for Offensive Language Identification
San-Hee Park | Kang-Min Kim | O-Joun Lee | Youjin Kang | Jaewon Lee | Su-Min Lee | SangKeun Lee
Findings of the Association for Computational Linguistics: EACL 2023

Warning: This paper contains some offensive expressions.Offensive content is an unavoidable issue on social media. Most existing offensive language identification methods rely on the compilation of labeled datasets. However, existing methods rarely consider low-resource languages that have relatively less data available for training (e.g., Korean). To address these issues, we construct a novel KOrean Dataset for Offensive Language Identification (KODOLI). KODOLI comprises more fine-grained offensiveness categories (i.e., not offensive, likely offensive, and offensive) than existing ones. A likely offensive language refers to texts with implicit offensiveness or abusive language without offensive intentions. In addition, we propose two auxiliary tasks to help identify offensive languages: abusive language detection and sentiment analysis. We provide experimental results for baselines on KODOLI and observe that language models suffer from identifying “LIKELY” offensive statements. Quantitative results and qualitative analysis demonstrate that jointly learning offensive language, abusive language and sentiment information improves the performance of offensive language identification.

2022

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Break it Down into BTS: Basic, Tiniest Subword Units for Korean
Nayeon Kim | Jun-Hyung Park | Joon-Young Choi | Eojin Jeon | Youjin Kang | SangKeun Lee
Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing

We introduce Basic, Tiniest Subword (BTS) units for the Korean language, which are inspired by the invention principle of Hangeul, the Korean writing system. Instead of relying on 51 Korean consonant and vowel letters, we form the letters from BTS units by adding strokes or combining them. To examine the impact of BTS units on Korean language processing, we develop a novel BTS-based word embedding framework that is readily applicable to various models. Our experiments reveal that BTS units significantly improve the performance of Korean word embedding on all intrinsic and extrinsic tasks in our evaluation. In particular, BTS-based word embedding outperforms the state-of-theart Korean word embedding by 11.8% in word analogy. We further investigate the unique advantages provided by BTS units through indepth analysis.