Duc Quang Nguyen
Also published as: Duc Q. Nguyen, Duc Nguyen
2025
Proceedings of the 1st Workshop on Language Models for Underserved Communities (LM4UC 2025)
Sang Truong | Rifki Afina Putri | Duc Nguyen | Angelina Wang | Daniel Ho | Alice Oh | Sanmi Koyejo
Proceedings of the 1st Workshop on Language Models for Underserved Communities (LM4UC 2025)
Sang Truong | Rifki Afina Putri | Duc Nguyen | Angelina Wang | Daniel Ho | Alice Oh | Sanmi Koyejo
Proceedings of the 1st Workshop on Language Models for Underserved Communities (LM4UC 2025)
The Sound of Syntax: Finetuning and Comprehensive Evaluation of Language Models for Speech Pathology
Fagun Patel | Duc Q. Nguyen | Sang T. Truong | Jody Vaynshtok | Sanmi Koyejo | Nick Haber
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Fagun Patel | Duc Q. Nguyen | Sang T. Truong | Jody Vaynshtok | Sanmi Koyejo | Nick Haber
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
According to the U.S. National Institutes of Health, more than 3.4 million children experience speech disorders that require clinical intervention. The number of speech-language pathologists (SLPs) is roughly 20 times fewer than the number of affected children, highlighting a significant gap in children’s care and a pressing need for technological support that improves the productivity of SLPs. State-of-the-art multimodal language models (MLMs) show promise for supporting SLPs, but their use remains underexplored largely due to a limited understanding of their performance in high-stakes clinical settings. To address this gap, we collaborate with domain experts to develop a taxonomy of real-world use cases of MLMs in speech-language pathologies. Building on this taxonomy, we introduce the first comprehensive benchmark for evaluating MLM across five core use cases, each containing 1,000 manually annotated data points. This benchmark includes robustness and sensitivity tests under various settings, including background noise, speaker gender, and accent. Our evaluation of 15 state-of-the-art MLMs reveals that no single model consistently outperforms others across all tasks. Notably, we find systematic disparities, with models performing better on male speakers, and observe that chain-of-thought prompting can degrade performance on classification tasks with large label spaces and narrow decision boundaries. Furthermore, we study fine-tuning MLMs on domain-specific data, achieving improvements of over 30% compared to base models. These findings highlight both the potential and limitations of current MLMs for speech-language pathology applications, underscoring the need for further research and targeted development.
2024
Crossing Linguistic Horizons: Finetuning and Comprehensive Evaluation of Vietnamese Large Language Models
Sang T. Truong | Duc Q. Nguyen | Toan Nguyen | Dong D. Le | Nhi N. Truong | Tho Quan | Sanmi Koyejo
Findings of the Association for Computational Linguistics: NAACL 2024
Sang T. Truong | Duc Q. Nguyen | Toan Nguyen | Dong D. Le | Nhi N. Truong | Tho Quan | Sanmi Koyejo
Findings of the Association for Computational Linguistics: NAACL 2024
Recent advancements in large language models (LLMs) have underscored their importance in the evolution of artificial intelligence. However, despite extensive pretraining on multilingual datasets, available open-sourced LLMs exhibit limited effectiveness in processing Vietnamese. The challenge is exacerbated by the absence of systematic benchmark datasets and metrics tailored for Vietnamese LLM evaluation. To mitigate these issues, we have finetuned LLMs specifically for Vietnamese and developed a comprehensive evaluation framework encompassing 10 tasks and 31 metrics. We observe that finetuning can help LLMs transfer knowledge across languages, serving as an efficient way to bolster their capabilities in non-English languages. Moreover, our analysis indicates that larger models can introduce more biases and uncalibrated outputs and the key factor influencing LLM performance is the quality of the training or finetuning datasets. These insights underscore the significance of meticulous finetuning with high-quality datasets in enhancing LLM performance.