Open Access
Dependency Parsing for Natural Language Understanding
1
University of Copenhagen, Denmark
2
University of Oxford, UK
3
King Saud University, Saudi Arabia
Abstract
This paper presents a comprehensive analysis of this research area in modern applications. We develop a comprehensive framework that ensures improved performance, enhanced reliability, and better scalability. The proposed system utilizes cutting-edge methods to automate key processes. Evaluation results show that our approach achieves 31% improvement while maintaining system performance.
Keywords
healthcare,medical imaging,diagnosis,bioinformatics,clinical decision support
How to Cite
Nielsen, C., Anderson, R., & Al-Rashid, A. (2022). Dependency Parsing for Natural Language Understanding. Nivo Light - International Journal of Research & Innovation, 4(4), 35–42. https://doi.org/10.28051/ojstest-146
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