Search Results for author: Teeradaj Racharak

Found 6 papers, 2 papers with code

Test It Before You Trust It: Applying Software Testing for Trustworthy In-context Learning

1 code implementation26 Apr 2025 Teeradaj Racharak, Chaiyong Ragkhitwetsagul, Chommakorn Sontesadisai, Thanwadee Sunetnanta

In-context learning (ICL) has emerged as a powerful capability of large language models (LLMs), enabling them to perform new tasks based on a few provided examples without explicit fine-tuning.

In-Context Learning Philosophy +3

Generative AI for Requirements Engineering: A Systematic Literature Review

no code implementations10 Sep 2024 Haowei Cheng, Jati H. Husen, Yijun Lu, Teeradaj Racharak, Nobukazu Yoshioka, Naoyasu Ubayashi, Hironori Washizaki

(1) While GPT series models dominate current applications by 67. 3% of studies, the existing architectures face technical challenges-interpretability (61. 9%), reproducibility (52. 4%), and controllability (47. 6%), which demonstrate strong correlations (>35% co-occurrence).

Ethics Systematic Literature Review

A Decoupling and Aggregating Framework for Joint Extraction of Entities and Relations

no code implementations14 May 2024 Yao Wang, Xin Liu, Weikun Kong, Hai-Tao Yu, Teeradaj Racharak, Kyoung-Sook Kim, Minh Le Nguyen

Second, information interaction mainly focuses on the two subtasks, leaving the fine-grained informtion interaction among the subtask-specific features of encoding subjects, relations, and objects unexplored.

named-entity-recognition Named Entity Recognition +1

A Mutual Inclusion Mechanism for Precise Boundary Segmentation in Medical Images

no code implementations12 Apr 2024 Yizhi Pan, Junyi Xin, Tianhua Yang, Teeradaj Racharak, Le-Minh Nguyen, Guanqun Sun

Our approach, inspired by radiologists' working patterns, features two distinct modules: (i) \textbf{Mutual Inclusion of Position and Channel Attention (MIPC) module}: To enhance the precision of boundary segmentation in medical images, we introduce the MIPC module, which enhances the focus on channel information when extracting position features and vice versa; (ii) \textbf{GL-MIPC-Residue}: To improve the restoration of medical images, we propose the GL-MIPC-Residue, a global residual connection that enhances the integration of the encoder and decoder by filtering out invalid information and restoring the most effective information lost during the feature extraction process.

Image Segmentation Position +3

DA-TransUNet: Integrating Spatial and Channel Dual Attention with Transformer U-Net for Medical Image Segmentation

1 code implementation19 Oct 2023 Guanqun Sun, Yizhi Pan, Weikun Kong, Zichang Xu, Jianhua Ma, Teeradaj Racharak, Le-Minh Nguyen, Junyi Xin

Unlike earlier transformer-based U-net models, DA-TransUNet utilizes Transformers and DA-Block to integrate not only global and local features, but also image-specific positional and channel features, improving the performance of medical image segmentation.

Image Segmentation Medical Image Segmentation +3

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