Language Correction
Language correction encompasses the automated identification and rectification of errors in text or other data modalities, aiming to improve accuracy, fluency, and overall quality. Current research focuses on leveraging large language models (LLMs) and other deep learning architectures, often incorporating techniques like chain-of-thought prompting, self-consistency checks, and multi-agent systems to enhance error detection and correction capabilities. This field is significant for advancing human-computer interaction, improving the reliability of AI systems across diverse applications (e.g., education, healthcare, robotics), and addressing challenges posed by noisy or incomplete data in various domains.
Papers
Fennec: Fine-grained Language Model Evaluation and Correction Extended through Branching and Bridging
Xiaobo Liang, Haoke Zhang, Helan hu, Juntao Li, Jun Xu, Min Zhang
DOP: Diagnostic-Oriented Prompting for Large Language Models in Mathematical Correction
Hao Chen, Biaojie Zeng, Xin Lin, Liang He, Aimin Zhou
IryoNLP at MEDIQA-CORR 2024: Tackling the Medical Error Detection & Correction Task On the Shoulders of Medical Agents
Jean-Philippe Corbeil
FINEMATCH: Aspect-based Fine-grained Image and Text Mismatch Detection and Correction
Hang Hua, Jing Shi, Kushal Kafle, Simon Jenni, Daoan Zhang, John Collomosse, Scott Cohen, Jiebo Luo