Soojong Lim


2025

pdf bib
Do LLMs Need Inherent Reasoning Before Reinforcement Learning? A Study in Korean Self-Correction
Hongjin Kim | Jaewook Lee | Kiyoung Lee | Jong-hun Shin | Soojong Lim | Oh-Woog Kwon
Proceedings of the 14th International Joint Conference on Natural Language Processing and the 4th Conference of the Asia-Pacific Chapter of the Association for Computational Linguistics

Large Language Models (LLMs) demonstrate strong reasoning and self-correction abilities in high-resource languages like English, but their performance remains limited in low-resource languages such as Korean. In this study, we investigate whether reinforcement learning (RL) can enhance Korean reasoning abilities to a degree comparable to English. Our findings reveal that RL alone yields limited improvements when applied to models lacking inherent Korean reasoning capabilities. To address this, we explore several fine-tuning strategies and show that aligning the model’s internal reasoning processes with Korean inputs—particularly by tuning Korean-specific neurons in early layers—is key to unlocking RL’s effectiveness. We introduce a self-correction code-switching dataset to facilitate this alignment and observe significant performance gains in both mathematical reasoning and self-correction tasks. Ultimately, we conclude that the crucial factor in multilingual reasoning enhancement is not injecting new linguistic knowledge, but effectively eliciting and aligning existing reasoning capabilities. Our study provides a new perspective on how internal translation and neuron-level tuning contribute to multilingual reasoning alignment in LLMs.

2005

pdf bib
Restoring an Elided Entry Word in a Sentence for Encyclopedia QA System
Soojong Lim | Changki Lee | Myoung-Gil Jang
Companion Volume to the Proceedings of Conference including Posters/Demos and tutorial abstracts

2001

pdf bib
Heuristic-based Korean Coreference Resolution for Information Extraction
Euisok Chung | Soojong Lim | Bo-Hyun Yun
Proceedings of the 16th Pacific Asia Conference on Language, Information and Computation