Error Correction
Error correction research focuses on automatically identifying and rectifying errors in various data types, aiming to improve accuracy and efficiency across diverse applications. Current efforts heavily utilize large language models (LLMs) and deep learning architectures, often incorporating techniques like prompt engineering, phonetic analysis, and constrained decoding to enhance performance and address specific error types (e.g., spelling, grammatical, speech recognition errors). These advancements have significant implications for fields like education, healthcare (improving clinical documentation), and speech processing, enabling more reliable and efficient systems. Furthermore, research explores self-supervised learning and error correction strategies to reduce reliance on large, labeled datasets and improve model robustness.