Soo Yong Kim
2026
Jamendo-MT-QA: A Benchmark for Multi-Track Comparative Music Question Answering
Junyoung Koh | Jaeyun Lee | Soo Yong Kim | Gyu Hyeong Choi | Jung In Koh | Jordan Phillips | Yeonjin Lee | Min Song
Findings of the Association for Computational Linguistics: ACL 2026
Junyoung Koh | Jaeyun Lee | Soo Yong Kim | Gyu Hyeong Choi | Jung In Koh | Jordan Phillips | Yeonjin Lee | Min Song
Findings of the Association for Computational Linguistics: ACL 2026
Recent work on music question answering (Music-QA) has primarily focused on single-track understanding, where models answer questions about an individual audio clip using its tags, captions, or metadata. However, listeners often describe music in comparative terms, and existing benchmarks do not systematically evaluate reasoning across multiple tracks. Building on the Jamendo-QA dataset, we introduce Jamendo-MT-QA, a dataset and benchmark for multi-track comparative question answering. From Creative Commons-licensed tracks on Jamendo, we construct 36,519 comparative QA items over 12,173 track pairs, with each pair yielding three question types: yes/no, short-answer, and sentence-level questions. We describe an LLM-assisted pipeline for generating and filtering comparative questions, and benchmark representative audio-language models using both automatic metrics and LLM-as-a-Judge evaluation.
2025
QGuard:Question-based Zero-shot Guard for Multi-modal LLM Safety
Taegyeong Lee | Jeonghwa Yoo | Hyoungseo Cho | Soo Yong Kim | Yunho Maeng
Proceedings of the The 9th Workshop on Online Abuse and Harms (WOAH)
Taegyeong Lee | Jeonghwa Yoo | Hyoungseo Cho | Soo Yong Kim | Yunho Maeng
Proceedings of the The 9th Workshop on Online Abuse and Harms (WOAH)
The recent advancements in Large Language Models(LLMs) have had a significant impact on a wide range of fields, from general domains to specialized areas. However, these advancements have also significantly increased the potential for malicious users to exploit harmful and jailbreak prompts for malicious attacks. Although there have been many efforts to prevent harmful prompts and jailbreak prompts, protecting LLMs from such malicious attacks remains an important and challenging task. In this paper, we propose QGuard, a simple yet effective safety guard method, that utilizes question prompting to block harmful prompts in a zero-shot manner. Our method can defend LLMs not only from text-based harmful prompts but also from multi-modal harmful prompt attacks. Moreover, by diversifying and modifying guard questions, our approach remains robust against the latest harmful prompts without fine-tuning. Experimental results show that our model performs competitively on both text-only and multi-modal harmful datasets. Additionally, by providing an analysis of question prompting, we enable a white-box analysis of user inputs. We believe our method provides valuable insights for real-world LLM services in mitigating security risks associated with harmful prompts.