Novel Approach
This research explores novel approaches across diverse fields, aiming to improve existing methods and address limitations in various machine learning and AI applications. Current efforts focus on enhancing model performance and robustness through techniques like active learning, diffusion models, and transformer architectures, often incorporating advanced concepts such as graph isomorphism networks and attention mechanisms. These advancements have significant implications for various domains, including robotics, personalized recommendations, medical image analysis, and cybersecurity, by improving accuracy, efficiency, and interpretability. The overall goal is to create more powerful, reliable, and explainable AI systems.
Papers
Image Denoising with Machine Learning: A Novel Approach to Improve Quantum Image Processing Quality and Reliability
Yifan Zhou, Yan Shing Liang
From Prejudice to Parity: A New Approach to Debiasing Large Language Model Word Embeddings
Aishik Rakshit, Smriti Singh, Shuvam Keshari, Arijit Ghosh Chowdhury, Vinija Jain, Aman Chadha
NDELS: A Novel Approach for Nighttime Dehazing, Low-Light Enhancement, and Light Suppression
Silvano A. Bernabel, Sos S. Agaian
RankMatch: A Novel Approach to Semi-Supervised Label Distribution Learning Leveraging Inter-label Correlations
Kouzhiqiang Yucheng Xie, Jing Wang, Yuheng Jia, Boyu Shi, Xin Geng